Accepted Manuscript Techniques for Insect Detection in Stored Food Grains: An Overview
Km.Sheetal Banga, Nachiket Kotwaliwale, Debabandya Mohapatra, Saroj Kumar Giri PII:
S0956-7135(18)30337-2
DOI:
10.1016/j.foodcont.2018.07.008
Reference:
JFCO 6221
To appear in:
Food Control
Received Date:
07 November 2017
Accepted Date:
06 July 2018
Please cite this article as: Km.Sheetal Banga, Nachiket Kotwaliwale, Debabandya Mohapatra, Saroj Kumar Giri, Techniques for Insect Detection in Stored Food Grains: An Overview, Food Control (2018), doi: 10.1016/j.foodcont.2018.07.008
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ACCEPTED MANUSCRIPT
Techniques for Insect Detection in Stored Food Grains: An Overview
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Km. Sheetal Banga1, Nachiket Kotwaliwale, Debabandya Mohapatra and Saroj Kumar Giri
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ICAR-Central Institute of Agricultural Engineering, Bhopal, India-462038
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Abstract
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Insects cause a major loss in stored food grains. Besides, pestilential activities of insects
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in stored food grains affect the marketability as well as the nutritional values. Early detection and
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monitoring of insects in the stored food grains become necessary for applying corrective actions.
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Visual inspection, probe sampling, insect trap, Berlese funnel, visual lures, pheromone devices
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etc., are some of the popular methods largely used in commercial granaries or grain storage
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establishments. Of late, electronic nose, solid phase micro-extraction, thermal imaging, acoustic
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detection, etc. have been reported to be successful in detecting insects. The capability of in-situ
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early detection, monitoring, cost, reliability, and labor requirements are the major factors
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considered during for selection of the method. Detection of hidden infestation, whose population
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may be many times higher than the free-living insects is an important concern to mitigate the
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losses in bulk storage warehouses, so as to enable the early actions for fumigation or to dispose
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off the grain. This paper reviews some of the widely used detection methods for early detection
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of insects’ pestilential activities in stored food grains as well as some of the novel technologies
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with an emphasis on acoustic method, which has a good commercial potential.
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Highlights
1
Corresponding author
Email address:
[email protected] ( Km. S. Banga)
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Traditional and modern methods for infestation detection in stored grains
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Sensor technologies provide more reliable, automated and non-destructive detection
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Acoustic sensor technology for early detection of infestation in stored grains
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Keywords: Detection method, post-harvest losses, pestilential, acoustic detection, electronic
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nose.
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1.
Introduction
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Global food security is an important issue as the world’s population is increasing rapidly
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and will reach over 9.1 billion by the year 2050 (Parfitt et al., 2010 and FAO, 2014). About 20-
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40% post-harvest losses (PHL) occur during field and post-harvest operations, and among these
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losses 55% losses occur during storage (World Bank, 2011). The worldwide damage of food
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grains due to insect infestation is estimated to be 10-40% annually (Asrar et al., 2016). In India,
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storage losses for cereals were about 0.75-1.21%, while the losses in the case of pulses and
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oilseeds were in the range of 1.18-1.67% and 0.22-1.61%, respectively (Jha et al., 2015). The
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economic value of harvest and post-harvest losses of agricultural produces are estimated to be
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INR 926510 million (based on production data of 2012-13 and wholesale prices of 2014, India)
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(Jha et al., 2015). Ensuring availability of food to the ever increasing population will be a major
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challenge in future due to a gradual decrease in the land and natural resources. It can be met
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through the efficient use of agricultural produce and reducing the pre and post-harvest losses.
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Sharon et al. (2014) reported that infestation caused the total quality loss as evident from the
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reduction in seed germination, pH level and protein content, elevated moisture content and free
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fatty acid content. Current standards of international trade apply only for external insects, and for 2
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the practical purpose, it is used as insect-free or insect absence checked by using standard
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method (ISO 6322-3, 2001).
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In Asia, about 6% of the total PHL occur due to improper storage facilities, in which
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insects and fungi are responsible for the half (3%) of the storage losses (Sharon et al., 2014).
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Specifically, whole pulses are at greatest risk, followed by the oilseeds and then by the cereal
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grains for infestation (Sarwar, 2013). Food grains respire during storage; hence deterioration
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occurs during storage, either quantitatively or qualitatively or both. Insects multiply at a higher
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rate under favourable conditions and may even destroy 100 % of the grains and contaminate the
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grains with their excreta and dead body parts resulting in with abominable odors and flavors
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(Neethirajan et al., 2007). Insect infestation increases with the increase in temperature up to
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45°C and high relative humidity due to their metabolic exertion, which aids to the growth of
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microflora and the development of hotspots in stored food grains. At times, the whole lot of grain
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can be charred due to increase in temperature, while stored in silo (Neethirajan et al., 2007).
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Figure-1 indicates the losses occurred in various crops during pre and post-harvest operations,
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from where it can be observed that losses due to insects are about 30% of the total loss.
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Several detection techniques have been developed for the internal and external detection
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of insects in stored food grains such as detection probe, staining of the kernel, Berlese funnel
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method, acoustic techniques, uric-acid method, X-ray imaging, nuclear magnetic resonance
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imaging, thermal imaging and solid-phase micro-extraction method (Neethirajan et al., 2007).
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Some of these techniques are time-consuming, expensive, have potential health hazard, and less
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efficient. Manual sampling traps and probes are the most common methods used on farms, while
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manual inspection, sieving, and Berlese funnel method are used in grain storage and handling
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facilities (Neethirajan et al., 2007). However, these methods are slow and are not able to detect 3
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the hidden infestation at early stages of primary pest species (Curculionidae, Bostrichidae,
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Gelechiidae, and Bruchidae), whose population are ten times more than the free-living insects
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(Fleurat-lessard, 2006).
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Monitoring of stored food grains is used to ascertain the trends in insect’s number,
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insect’s development stages or infestation level in a period of time. It also furnishes the insect's
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activity in respect to environmental conditions and determines the efficacy of insect pest
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management actions. To reduce these losses and to ensure the safe storage for sustainable
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agriculture production, there is a need to develop advanced insect infestation detection methods
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with higher sensitivity. While looking at traditional methods, this review paper is to give a birds-
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eye view of the recently developed technologies for insect detection in stored products. Special
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emphasis has been given to the acoustic detection of insects in stored food grains.
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2.
Conventional methods of insect detection
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Several conventional methods are used in grain storage establishments of which visual
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inspection, probe sampling, and insect trap method are popular. These methods are simple but
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time-consuming, labour-intensive and subjective. Some of the popular techniques are discussed
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in brief in the following sections.
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2.1 Detection of insect presence
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2.1.1 Visual inspection
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Detection of insect infestation in stored food grains can be done through visual inspection.
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It is a uniform, qualitative and subjective method, used as a standard method for comparison of
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quantitative methods (Semple, FAO report, 1980). Presence of eggs, adult insects, and infested 4
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grains can be seen by the naked eye without drawing grain samples or looking for residual
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infestation within the storage bags. Ministry of Agriculture, Fisheries and Food Inspector,
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Britain, developed some notations for the use of sack, storage, and sampling inspection (Table
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1).
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2.1.2 Probe sampling and trap method
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Probe sampling and sieving are the most widely used methods; however it is laborious
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and time-consuming. In this method, grains are drawn (0.5-1 kg) by probes from the stored bin.
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Sieves are used for screening the insects from the grains. Probes are kept in grain storage bins for
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long periods; an inspector manually removes it and visually inspects them, thus making it a time-
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consuming and sometimes difficult procedure.
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Various types of traps have been developed by TNAU, Coimbatore (India) (Mohan et al.,
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1994). These devices (Figure 2) are useful in timely detection and monitoring of insect
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infestation in stored food grains. Wandering of insects towards air is used as a concept to design.
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The efficiency of two-in-one probe trap is high due to a combination of probe and pitfall trap. It
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is best suited for trapping of pulse beetles as they always wander on the grain surface. An
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indicator device consists of a perforated cone-shaped cup with a lid at the top, is fixed at the
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bottom with a container and circular dish coated with a sticky material (Mohan, 2007; Mohan
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and Rajesh, 2016). TNAU automatic insect removal bin removes the insect and crushes the eggs
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laid by them. Its efficiency is very high (90%) as most of the insects can be removed within 10
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days. It produced 1-4% damage in grains as compared to 33-65% damage in the ordinary bin
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after 10 months storage period in paddy and sorghum grains (Mohan, 2007). The UV light traps
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embedded with an ultra-violet light (4 W germicidal lamp) rays of 250 nm are used in storage 5
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godowns at 1.5 m above the ground level. These traps are useful in the trapping of a variety of
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stored grain insects including lesser grain borer (Rhyzopertha dominica F.), rice weevil
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(Sitophilus oryzae L.), red flour beetle (Tribolium castaneum Herbst), sawtoothed grain beetle
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(Oryzaephilus surnamensis) etc. (Mohan and Rajesh, 2016).
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2.1.3 Visual lures and Pheromones
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“Light” can be used for detection, monitoring and management of insects in stored food
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grains in warehouses, godowns, elevators etc. by utilizing the responses of insects towards the
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light. It is a “clean” form of technology and uses three types of lights: incandescent, fluorescent,
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and ultraviolet. Insects allured towards the lights of wavelength between 280-600 nm and some
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colored objects due to their explicit reflectance (Neethirajan et al., 2007). Insect species, age,
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environmental conditions, sex and intensity of light affects the responses of insects towards the
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light (Shimoda and Honda, 2013). Pheromones are chemical substances secreted by the insects,
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used in traps to control insect populations. These are used for communication among insects.
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Traps of different materials, containing pheromones (sex and aggregation pheromone) used on
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adhesive-coated surface or a funnel-shaped structure to catch the insects (Laopongsit and
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Srzednicki, 2010).
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2.2 Detection of insect density
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2.2.1 Berlese funnel method
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It consists of a standard Berlese funnel apparatus with a mesh screen (Minkevich et al.,
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2002). Grain samples are put in the funnel below the incandescent light for 8 h and a jar
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containing alcohol/water is used for capturing the insects. Funnels are equipped with screen
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bottom small enough to retain the grains and large enough to allow passage of the insects
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through it. It uses dry heat to remove the insects from the grains. Dry heat warms the grains and
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compels the insects to move opposite to heat in a funnel (Neethirajan et al., 2007).
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2.2.2 Uric acid method
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Uric acid, the main element of insect's excreta has been recommended as a tracing
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element of insect infestation in stored foodgrains. This method detects the insect infestation of
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the entire storage period indirectly (Rajendran, 2005). Later on, different methods were
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developed to determine the uric acid level: by paper chromatographic, fluorometric, colorimetric,
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gas-liquid chromatography (GLC), thin layer chromatography (TLC), high performance liquid
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chromatography (HPLC) and by enzymatic methods (Ghaedian, 1995). As per BIS (1970),
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colorimetric method can be used for uric acid measurement to determine the level of infestation.
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2.2.3 Hidden infestation detector
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It is a very simple and low-cost device used to detect hidden infestation in grains. It
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consists of three circular plates placed over one another. The top and middle plates are hinged for
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easy operation during lifting. The base plate is covered with ninhydrin treated filter paper.
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Sorghum infested with S. oryzae, wheat with angoumois grain moth (Sitotroga Cerealella) and
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green gram with cowpea weevil (Callosobruchus maculatus) were tested with this detector.
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Holes of middle plate were filled with grain samples of about 20% moisture content. The top
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plate was pressed to crush the grains. Filter paper stained the infested grains, which were counted
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and percentage of infestation was estimated by comparing with other methods (Dakshinmurthy
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and Ali, 1984; Anonymous, 1991).
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3.
Modern methods of insect detection 7
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The approach of modern methods in stored food grains may offer an easy, rapid solution
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to detect both internal and external infestation even of low density, through less destruction of
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materials, so that decisive action can be taken as early as possible. Some of the technologies use
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sensors, cameras, microscope, radiation sources, volatiles, sound etc. as measures for insect
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detection. These methods need comparatively less labour than the conventional methods;
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however, the labor should be skilled enough to control the sophisticated equipment as per the
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protocols. These technologies can be grouped based on the properties employed for detection of
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insects viz., electrical conductivity, olfactory, response to electromagnetic-spectrum and acoustic
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signals. Details of the attempts made under these different categories are given in following
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sections.
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3.1 Conductance based method
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3.1.1 Electrically conductive roller mill
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In this method principle of electrical conductance and compression force is used for
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infestation in stored foodgrains. In single kernel characterization system of two resistors and
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voltage–divider circuit, one kernel acts as a resistor. The conductance of kernels is inspected
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through the voltage during the crushing of kernels between the rolls. Presence of insects inside
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the kernel increases the kernel moisture content, which provides an easy discrimination of sound
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kernels from the infested kernel. This method is not suitable for detecting the insect eggs,
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immature larvae and dead insects in low moisture grains (Pearson and Brabec, 2007).
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Pearson et al. (2003) developed an electrically conductive roller mill "insect-o-graph" for
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wheat classification. Infested kernels were classified from the uninfested kernels on the basis of
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the signal characteristics of the system and the conductance signal received. Pearson and Brabec 8
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(2007) reported the detection of infested kernels above 70% along with larvae and pupae of R.
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dominica, and tested 1 kg of wheat in about 2 min. Rice weevil (S. oryzae L.), and the lesser
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grain borer (R. dominica F.), major internally infesting insects were tested. It can be a useful tool
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for classification of grains at the receiving stations as it provides the information to grain storage
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managers to make a decision whether a storage bin should be fumigated or to be discarded.
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Brabec et al. (2010) investigated the detection of lesser grain borer (LGB) fragments in wheat
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flour by using conductive roller mill. They found that conductance mill was suitable for testing
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of internally infested insects in grains of low density (up to 3 insects) in 1-2 kg of grains at the
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rate of 1 kg of grain per minute.
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Brabec et al. (2012) used the modified laboratory mill to detect the internal infestation of
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immature LGB in brown rice and wheat. The modified conductance mill had detected LGB in
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500 g sample of brown rice and wheat by 97, 83, and 42% of large, medium, and small LGB
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larvae, respectively within 150 s. The detection rate was higher for wheat as compared to thinner
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brown rice. Brabec et al. (2017) detected the maize weevil (Sitophilus zeamais) infestation with
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different development stages in popcorn kernels through a conductive roller mill. Two mills were
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tested and it was observed that slower feeding mill could detect 81% pupae, 91% medium larvae,
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and 47% small larvae while the faster mill detected 75% pupae, 80% medium larvae, and 43%
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small larvae. Results show that this method is suitable for quick detection of matured stages of
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larvae and pupae.
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3.2 Olfactory based methods
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3.2.1 Solid phase micro-extraction (SPME)
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Odour detection techniques for insect infestation and grain quality evaluation are gaining
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popularity. In addition, this method facilitates early detection of infestation, storage age
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determination, varietal discrimination of foodgrains etc. SPME used the headspace techniques to
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isolate volatile compounds vaporized from samples, which was then condensed and finally
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evaluated by gas chromatography-mass spectrometry (GCMS) for quantification of volatiles.
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The efficiency and sensitivity of SPME method depend on extraction time and temperature.
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High temperature and long extraction time favor in the collection of more analytes (Laopongsit
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et al., 2014). Senthilkumar (2010) detected the T. castaneum and C. ferrugineus by headspace
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analysis (HS-SPME) coupled with GCMS. Niu et al. (2016) used SPME coupled with GC-FID
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(gas chromatography-flame ionization detection) and GC-MS to establish relationships between
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storage period and grain quality, and grain quality and insect infestation of R. dominica in wheat.
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Abuelnnor et al. (2010) identified distinct volatile compounds from infested wheat flour and
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wheat grain with the T. confusum and S. granaries, respectively by SPME clenched with gas
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chromatography-mass spectrometry. Larval and adult insects secreted distinct volatiles and these
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distinct volatiles were useful for early monitoring of infestation.
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3.2.2 Electronic nose (E-nose)
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The intervention of divergent electronic nose (E-nose) sensor types and instruments,
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works on the principle of electronic aroma detection (EAD) (Wilson, 2012). E-nose consists of
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three parts: an odor sensor(s) set, a data pre-processor, and a data interpretation system. Sensor
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set detects the volatile compounds present in the headspace of stored food grains and reacts by
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changing the electrical properties. It is embedded with a predefined database to differentiate
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certain volatiles (Wu et al., 2013). E-nose has the potential of rapid and automatic detection of 10
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insects in stored grains (Zhang et al., 2007). Selection of sensors array for specific volatile
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organic compounds (VOCs) requires special attention to achieve the targeted results. Sensors
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array should be selected to maximize the overall performance of the instrument and furnish the
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different selectivity profiles for a particular application (Phaisangittisagu et al., 2010). Metal
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oxide semiconductor (MOS) and conducting polymers (CP) type sensors are most widely used
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but, carbon black composite (CBC), carbon dioxide (CO2), metal oxide semiconductor field
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effect transistor (MOSFET), surface acoustic wave (SAW), optical fiber live cell (OF-LC) etc.
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have also been used (Wilson, 2013).
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Evans et al. (2000) used e-nose used to discriminate between infested and non-infested
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samples of different fungal species through the development of secondary volatile metabolites.)
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used the E-noses have been employed to discriminate and detect the insect infestation,
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differentiate between insect species, predict insect population (Stetter et al., 1993; Wu et al.
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2013) with some successes. Zhang and Wang (2007) used the E-nose to assess the detection of
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storage age and insect (R. dominica F.) damage incurred in wheat.
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3.3 Electromagnetic-spectrum based methods
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3.3.1 Imaging methods
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3.3.1.1 Machine vision within visible domain
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Machine vision also known as computer vision, is an emerging technology which
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combines the mechanics, optical instrumentation, electromagnetic sensing, digital and image
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processing technology (Patel et al., 2012). It uses the principle of object recognition and
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classification on the basis of information extracted from the image captured by using the camera 11
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(Sun, 2016). It is a rapid, consistent, economic and objective inspection technique that has the
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potential for applications in quality evaluation of agricultural produce. The speed and accuracy
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of this non-destructive technique can satisfy the demand of ever-increasing production and
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quality requirements hence is helpful in intensifying the development of automated processes.
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Machine vision technology consists of three main processes- image acquisition, image
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processing or analysis and, recognition and interpretation. Image acquisition consists of
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capturing a real image by using cameras, scanners, videos etc. and transforming it into a digital
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image (Figure 3). Image pre-processing assigns the initial processing of the raw image.
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Sometimes, pre-processing is accomplished to enhance the image quality by suppressing
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undesired distortions “noise” or by the advancement of important features of view of interest
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(Narendra and Hareesh, 2010). Image feature extraction comprised the extraction of image
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features at distinct levels of intricacy from the image data (Davies, 2005). In image segmentation
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process, cutting, adding and feature analysis of images is done to divide image regions that have
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a substantial correlation with objects or view of interest using the principle of matrix analysis. It
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is one of the most crucial steps of the whole image processing technique, as the accuracy of this
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technique is extremely dependent on consequent extracted data. Image recognition and
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interpretation provide the useful information after image analysis that can be used for process or
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machine control (Gunasekaran, 1996). Monitoring and evaluation of varieties and soundness of
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grains, amount of foreign material, mold and insect infestation etc. in bulk grains can be
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successfully carried out (Aviara et al., 2016). This technique is suitable to detect the whole and
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live insects in stored food grains. Zayas and Flinn (1998) used the multispectral analysis with
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pattern recognition to detect the R. dominica in bulk wheat samples and the results revealed that
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recognition efficiency for adult lesser grain borer and some foreign material was more than 90%.
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3.3.1.2 X-ray imaging
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X-ray imaging method is an encouraging technique utilized the non-contact sensor for
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inspection of large samples while appreciably providing the information (Yacob et al., 2005).
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Soft X-ray imaging is a fast non-destructive and direct method, used for the detection of invisible
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insects in stored food grains (Karunakaran et al., 2003), grading, internal quality of agricultural
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produce also for hidden insects in mangoes (Kotwaliwale et al., 2014). The imaging system
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encompassed with X-ray source; X-ray converter; imaging system and isolated casing for image
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capture (Kotwaliwale et al., 2011). The imaging medium, captured the images, isolated from the
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surrounding radiation by a casing (Kotwaliwale et al., 2007). Electromagnetic waves of 0.1-
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10 nm wavelengths with 0.12-12 KeV energy are used as soft X-ray for internal inspection in
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very less time (3-5 s) to produce a X-ray image. Kotwaliwale et al. (2007a) determined the
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quality of pecans (Carya illinoinensis (Wangenh.) K. Koch) by using soft X-ray with voltage
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levels ranging from 15 to 50 kVp in steps of 5 kVp, and five current levels (0.1 to 1.0 mA) and
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with two orientations. They found that severely insect damaged samples and severely
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underdeveloped nutmeat could be isolated easily due to low percent area occupancy. Features of
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pecan such as shell, nutmeat, air gap between shell and nutmeat, defects, and presence of insects
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were distinctly visible in X-ray images after contrast stretching (Figure 4). Karunakaran et al.
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(2003a) used the soft X-ray method in detecting Cryptolestes ferrugineus (Stephens), T.
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castaneum (Herbst), Indianmeal moth (Plodia interpunctella), S. oryzae (L.), and R. dominica
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(F.) in wheat kernels. The parametric classifier identified infested kernels by different stages of
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S. oryzae and larvae of R. dominica with more than 98% accuracy.
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Chelladurai et al. (2014) used the soft X-ray and near-infrared (NIR) hyperspectral
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imaging techniques to acquire images of soybeans infested by C. maculatus along with 13
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uninfested kernels. 33 features were extracted by soft X-ray imaging and 48 features were
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extracted by hyperspectral imaging for data analysis. Different stages of infestation were
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classified by using LDA and quadratic discriminant analysis (QDA) models. About 86% of
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uninfested grains and 83% of infested grains by C. maculatus were classified by LDA for soft X-
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ray images. Hyperspectral data were classified by the principal component analysis (PCA) at
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wavelengths of 960 nm, 1030 nm, and 1440 nm. Combination of X-ray and hyperspectral
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features improved the classification accuracy of egg and larvae stages.
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3.3.1.3 Thermal imaging
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Thermal imaging is a night vision technology, which improves the visibility of an object
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in a dark environment by detecting the infrared radiation energy emitted by the object and
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transforming it into the visible image. Infrared energy emitted by an object is a function of
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temperature and known as heat signature and the produced image is known as thermogram
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(Nanje Gowda et al., 2013). This imaging system consists of detectors and lenses, thermal
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imaging cameras and data collection tools. This technique is useful in the management of stored
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food grains by detecting damaged grains, foreign materials, and internal and external infestation
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of grains. It is useful, where temperature differences are used in evaluation or quantification of a
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process. Thermal imaging provides the potential advantages over the fluorescence and
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hyperspectral imaging in cost reduction and determination of material properties.
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Detection of Rusty grain beetle (Ceyptolestes ferrugineus) infestation in the wheat kernel
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by infrared thermal imaging with the camera, control panel, microwave applicator, conveyor etc.
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has been reported by Manickavasagan et al. (2008). They used the system for detection of C.
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ferrugineus inside the seed coat on the germ of wheat kernels. Thermal images were captured for
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the infested kernels to identify the developmental stages of the insect. Respiration rate of 14
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different stages of C. ferrugineus were highly correlated(r = 0.83-0.91) with the temperature
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distribution on the surface of the infested kernels. Classification accuracy of quadratic and linear
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function for infested and sound kernels was 83.5% and 77.7% and, 77.6% and 83.0%,
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respectively. Chelladurai et al. (2012) used the thermal imaging for moong bean infested by C.
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maculatus. Classification accuracy of 55.24-77.84% by LDA model and 75.45-91% by QDA
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model were obtained. More than 80% moong beans were identified as infested by initial stages
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of C. maculatus with QDA model. Thermal images of fungal infected paddy were obtained using
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mid infrared thermal camera at 0 s (before heating), 180s (after heating) and 210 s (30 s after
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cooling) (Figure 5). Average pixel of the image was used as feature to determine the moisture
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content. Fungal infected paddy gave higher average pixel values compared with non-fungal
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paddy (Khairunniza-Bejo and Jamil, 2013).
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3.3.2 Non-imaging methods
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3.3.2.1 Electronic grain probe insect counter (EGPIC)
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An automated passive grain probe, known as Electronic Grain Probe Insect Counter
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acquires offsite monitoring and detection of insect pests and remotely displays the data of
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infestation levels in stored food grains. It consists of a probe, system circuitry, data logger and a
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user interface. Due to the danger of grain dust explosions, electric power and circuitry are kept
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outside from the storage structure and pass only low voltage, high impedance, sensor leads
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through the grains from the beam generation/detection circuitry to sensor head. Acquired
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information by sensors is transmitted to the computer that analyses the signals and makes time-
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stamped records of detection (Litzkow et al., 1997). When an insect falls on the sensor head of
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EGPIC across the infrared beam, signal is generated by the infrared diode and is then received by 15
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the infrared phototransistor, which makes a slight declination in the light intensity passing to the
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phototransistor. The electronic circuitry system detects this slight declination and converts it into
331
a time-stamped insect count and then insects exit the probe (Shuman and Epsky, 2001). It
332
monitors the insect’s levels continuously at any depth. Flinn et al. (2009) tested the commercial
333
electronic grain probe trap in two bins of wheat (32.6 tonnes) during 2 years of storage. They
334
developed a regression model and compared it with the insect density estimated by EGPIC.
335
There was 40-75% variation in predicted insect density against EGPIC. An expert system
336
“Stored Grain Advisor Pro” was coupled with EGPIC to estimate the C. ferrugineus (Stephens),
337
R. dominica (F.), and T. castaneum (Herbst) density from trap catch counts. Expert system
338
estimated insect density efficiently but it was unable to differentiate the R. dominica and T.
339
Castaneum due to the same size (Flinn et al., 2009).
340
3.3.2.2 NIR spectroscopy
341
Near-infrared spectroscopy (NIRS) measures the concentration of biological materials
342
such as water, protein, starch etc. by taking the dispersed reflectance, interactance or
343
transmittance of the sample in the range of 780-2500 nm. It is a non-destructive, fast, accurate
344
and cost-effective method viable for internal as well as external detections in fruits, vegetables,
345
cereals and pulses (Elizabeth, 2002; Kim et al., 2003; Xing and Guyer, 2008). Reflectance mode
346
measures the light reflected or dispersed back from the surface of the object. Interactance mode
347
is acclamatory when transmittance assessment is arduous to access the internal information
348
(Kavdir et al., 2007). Ridgway and Chambers (1996) reported the use of NIR reflectance
349
spectroscopy in the detection of internal infestation by Sitophilus granarius (L.) in wheat.
350
Chelladurai et al. (2014) used soft X-Ray imaging and NIR hyperspectral imaging in the
351
detection of C. maculatus and classified the infested and sound kernels of soybean. Maghirang et 16
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al. (2003) detected the live pupae and larvae of S. oryzae (L.) with an accuracy of 92% to 93%
353
by an automated NIRS system (400-1700 nm). A comparison was done by Perez-Mendoza et al.
354
(2003) between a NIRS and standard floatation method for wheat flour and they found that NIRS
355
was the rapid method (less than one min/sample), could be able to detect in bulk samples without
356
any sample preparation. Fourier transformation near-infrared (FT-NIR) technology, a rapid
357
detection instrument was used to detect moldy maize kernels with a 86.7% validation accuracy
358
on characteristic wavelengths of 1466 nm, 1530 nm, 1926 nm, 2321 nm and 2384 nm (Chu et al.,
359
2014).
360
3.4 Acoustic detection
361
Acoustic technology depends on the hypothesis that the sound made due to movement
362
and feeding of insects can be monitored to estimate the type and density of insects within a
363
stored grain mass. It has shown encouraging results on detection of internal and external insects
364
in the grain mass during early stages of infestation through insect feeding sounds (Eliopoulos et
365
al., 2015). Acoustic sensors detect the mechanical or acoustic waves. When an acoustic wave
366
transmits through certain material or object, it gets affected by the properties of material/object
367
and by any hurdle present in the path. Due to this, velocity or amplitude of the acoustic waves
368
dampens and then these changes are translated into digital or analog signal through transducers.
369
It generally uses the piezoelectric substrate as a sensor. Detection of concealed insects in grain
370
kernel depends on amplification and filtering of their movement and feeding sounds.
371
Classification of targeted sounds from other sounds and other limiting factors such as sensor
372
sensitivity, sound-noise ratio, the range of sensors etc., limit the applicability of acoustic devices.
373
With technological advancement, improved sensors and the use of digital signal processing 17
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software tools has enabled increased receptiveness and the credibility. Pattern features (spectral
375
and temporal) are also useful in classification of background noise from the targeted noise.
376
Standard speech recognition tools like Gaussian mixture models, hidden Markov models were
377
used for the separation of insects’ sounds from background noise (Mankin et al. 2009).
378
Attempts were also made to detect the damage and infestation in wheat and hazelnuts by
379
using impact acoustic technology and voice recognition methods (Pearson et al., 2007). Acoustic
380
detection of internal feeding and movement sounds of S. zeamais, rice weevil (S. oryzae (L.))
381
and granary weevil (S. granarius (L.)) were at relatively low intensity, 15-35 dB with frequency
382
2-6 kHz (Pittendrigh et al., 1997). Generally, the sound of insects comprises of trains of short
383
broadband impulses (1-10 ms), whereas background noise occurrs as continuous signals with
384
symphonic peaks (Mankin et al., 2011). Hagstrum et al. (1996) acoustically detected the R.
385
dominica (F.), T. castaneum (h.) and S. oryzae (L.) in wheat grains. The sound produced by
386
insects was detected without removing grain samples from the storage bin. Above 90% detection
387
level could be achieved at the bottom of the structure. They suggested it as an easy and quick
388
method of detection and population density estimation of insects. Kiobia et al. (2015) developed
389
a sound and vibration controlled system to detect Prostephanus truncates and S. Zeamais in
390
maize storage for managing the pest in stored food grains in Sub-Saharan Africa. They found
391
that larval impulses were measurable by the sensors within 25 cm range. Software tools were
392
also developed on the basis of differences in the spectral and temporal pattern of insect sounds
393
correlated with differences in physiological activities. Feeding sounds produced broad, high-
394
frequency spectrum than the low energy moving sounds (Mankin et al., 2010). Trains of
395
consecutive insect impulses (200 ms or less) established more significant indicator of insect
396
presence than the single impulse (Njoroge et al., 2016, 2017). 18
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Fleurat-Lessard et al. (2006) developed a fully automatic system for the inspection of
398
insects in bulk grains of wheat and a pilot scale system of 300 kg (Figure 6). Detection of
399
primary pests of adult and larvae of S. oryzae (SO) at a density of one adult/10kg and one
400
larva/kg of wheat within 2 min scanning time with more than 95% of likelihood could be
401
achieved by this system in 20 cm detection range with a sample of 65 kg. Detection of R.
402
dominica (RD) was easier than SO. For SO, peak sound was 3.3-3.8 kHz and for RD was 2.6 to
403
3.2 kHz. The relationship between insect activity and density levels was quantitatively modeled
404
in the range from one individual per 10 kg to 10 individuals per kg at temperature levels ranging
405
from 5 to 30 °C. Threshold temperature for larval activity was as low as 8°C (SO) and 15°C for
406
RD.
407
Lebnac et al. (2011) developed a real-time acoustic insect detection probe to detect and
408
identify the sounds of different species of different stages of primary insects in long-term
409
storage, operated from the surface of the bulk grain. The equipment possesses the prediction of
410
live concealed insects of all stages with a confidence factor greater than 90 % in a 30 kg grain
411
mass. Eliopoulos et al. (2015) reported the efficacy of bioacoustics in detecting the presence of
412
adult beetles inside the grain mass of wheat. Adults of the most important beetle pests of stored
413
cereals and pulses, in various population densities (1, 2, 10, 20, 50, 100, 200 & 500 beetle
414
adults/kg grain) were used. The linear model was very effective in describing the relationship
415
between population density and number of sounds. Njoroge et al. (2016) investigated the
416
frequency and time pattern differences in acoustic signals produced by Prostephanus truncates
417
(Horn) and S. zeamais (Motschulsky) in stored maize to distinguish among these species and
418
stages. Frequency profiles were categorized into five types of profiles to show the differences
419
between peak energy and broadness of frequency range. Bursts of three closely spaced impulses 19
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were observed and mean rates of bursts, mean counts of impulses per burst, and mean rate of
421
impulses in bursts were calculated to compare the species and stages.
422
Bioacoustics of bean weevil (Acanthoscelides obtectus) on Common bean (Phaseolus
423
vulgaris) was used to see its emergence inside the grains in an anechoic chamber. Low amplitude
424
sound impulses at low and higher rate were used in real-time detection and classification of
425
insect sound from background noise (Njoroge et al., 2017). Advancement in research of such
426
technology in the future will reduce its cost development of acoustic detection mobile app with
427
existing data for specific species for farmers use.
428
3.4.1 Signal processing
429
Processing of recorded sound for classification of background noise and targeted noise uses
430
speech recognition methods. For the analysis of acoustic signals, various types of windows are
431
used for spectrogram analysis.
432
3.4.1.1 Window Function and filtering
433
In signal processing, a window function (also known as an apodization or tapering
434
function) is a mathematical function, used to smoothly draw a sampled signal down to zero at the
435
edges of the sampled region (Prabhu, 2013). The spectrum of window function can be given in
436
time-domain as well as in the frequency domain. In the analysis of acoustic signals, more than
437
one sample (atleast two full cycles) is used. In the window, a series of speech samples are
438
selected for spectral analysis. Different types of windows are used for acoustic detection system,
439
viz. rectangular, bartlett, hamming, hanning, blackman, blakman-harris, welch and gaussian
440
(Prabhu, 2013). Rectangular window is not used for frequency analysis of the acoustic signal
441
(Mannell, 2008). Hanning window uses cosine cycles, valued between 0 and 1. Hamming
442
window is related to hanning and it covers the values between 0.054 and 1. Generally, gaussian 20
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windows are used for the analysis of acoustic signals (Mannell, 2008) in biological materials.
444
Complex acoustic signals are filtered prior to processing via low-pass (LP) filter, high pass (HP)
445
filter and band pass (BP). During filtering, some frequencies are allowed to pass and others
446
should be blocked. In most filters, there is a region around the cut-off frequency where
447
frequencies are partially allowed to pass. This provides a more gentle transition between the
448
pass-band (the frequencies which are unattenuated) and the stop-band (the frequencies which are
449
attenuated) (Mannell, 2008).
450
The duration of R. ferrugineus sound impulse was 3-50 ms and 3.8 kHz peak frequency
451
range (Potamitis et al., 2009). Usually, the peak of relative energy of background noise was high
452
at low frequency (below 1 kHz) (Mankin, 2010). Requisite of filtering depends on the nature and
453
intensity of the background noise. After filtering, signals above the threshold amplitude were
454
removed. The amplitude and frequency of insects were affected by the installed locations of
455
sensors. If multiple sensors are used then signals from one sensor can be subtracted from the
456
other to reduce distant noise before further signal processing.
457
3.4.1.2 Acoustic spectrum features
458
Discrimination of signal-noise can be done by separating respective sound produced by the
459
insects by computing certain features of each impulse and then they are compared with the
460
normalized spectral features (Potamitis et al., 2009). Several spectral features were reported to be
461
useful for discrimination viz. Fourier transform, the dominant harmonic, and linear frequency
462
cespstral coefficients (Mankin et al., 2009). Clustering of features of insect produced sound have
463
been used to discriminate the background noise features viz. vector quantization and Gaussian
464
mixture models (Potamitis et al., 2009).
21
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3.4.1.3 Acoustic temporal pattern features
466
The authenticity of insect detection can be enhanced by consolidating temporal pattern
467
features. Many insects possess behavioral patterns with regularities. Some of the patterns with
468
insufficient regularities were not characterized reliably by the computer programs, but some
469
studies found that these patterns were identified as a burst of impulses separated by quiet
470
intervals of 0.25 s or more (Mankin et al., 2009). About six impulses occurred in a burst due to
471
feeding or movement of insects. This phenomenon can be used as signal features to discriminate
472
a target insect sound from the background sounds. Identification of temporal features is easy for
473
large and active insects. Consolidation of bursts as a signal processing feature enables the
474
removal of wind-induced trapping noise or other background noise similar to the sound signals
475
produced by insects. A detailed description of advantages and limitations of modern methods employed for
476 477
insect detection are tabulated in Table 2.
478
4.
Conclusions
479
Several methods are available to detect the insect infestation in stored foodgrains. Among
480
conventional methods, visual inspection is a simple, direct and inexpensive method but not
481
suitable for bulk storage, detection of hidden and low-density infestation; besides being time-
482
consuming. Sampling probes and traps can be effective but are time-consuming and tedious in
483
nature and provide only the temporal data and sometimes need destruction of samples. The
484
visual lure is a chemical-free method which attracts the insect by light but their accuracy is
485
affected by environmental factors and offers low sensitivity and gives information only about
486
adult insects. Pheromones method does not need sampling and it can detect the internal as well 22
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487
as external insects, however its detection effciency is limited to few species of insects as limited
488
information is available on different pheromone characteristics. Berlese funnel method is one of
489
the most common methods used in grain elevators, but it is slow, unable to detect hidden
490
infestation and accuracy depends on insects’ size. The uric acid detection method is an officially
491
accepted method in many developing countries, however it is applicable to highly infested grains
492
and produces low sensitivity. Hidden infestation detector is a simple, cost-effective apparatus but
493
it is applicable for a very small quantity, and destructive in nature. Most of the conventional
494
methods show effectiveness for external detection only.
495
In recently developed methods, electrical conductance method detects the hidden infestation but
496
it cannot detect the egg and larvae stages and requires high moisture content and applicable only
497
for single grain characterization at a time. The solid phase micro extraction method coupled with
498
dynamic headspace has high sensitivity but it can detect only the adult stages and requires the
499
skilled person for the operation and analysis. An electronic nose in the detection of insects
500
provides the quick, objective, less poisoning high technology but its limitation lies in the
501
requirement of a large amount of experimental data to train the sensors; besides the sensors are
502
affected by the environmental factors and also their efficiency decreases over time. Machine
503
Vision system operating in visible range is used for various applications in agricultural
504
operations and it shows the ability to classify the grains but it is expensive and unable to detect
505
the dead and internal insects. X-ray is a non-destructive and direct method, applicable for
506
internal as well as external detection but it is costly and harmful as it requires the skilled person.
507
Thermal imaging has the potential to identify the infested and sound grains but it cannot identify
508
the development stages of insects and it is low in cost as compared to the hyperspectral and
509
fluorescence imaging. EGPIC is a real-time automatic monitoring method suitable for bulk
23
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510
storage but it restricts the placement of EGPIC to easily accessible locations. NIR spectroscopy
511
cannot detect the low level of infestation and unable to differentiate between the live and dead
512
insects but it is very sensitive to the moisture content of samples. Acoustic detection technique
513
demonstrates the superior sensitivity in internal and external infestation as well as it is low in
514
cost, automatic, rapid, non-destructive and able to perform well in bulk storage of grains.
515
Discrimination of background noise from the insect’s sound spectrum is a challenging task. The
516
advent of various software, technology, and statistical tools reduced the complexity in the
517
analysis of capture sound spectrums. Therefore, it has a potential to be used in bulk storage of
518
food grains for early detection of insect infestation. Some researchers suggest large-scale
519
application of this technology to ensure the safety of stored agriculture produces. There is a need
520
for such a potential technology which caters automation, high efficiency in bulk storage, less
521
human power and little or no destruction of the commodity. With the advancement of
522
computational power and availability of very good sensing devices at affordable cost, acoustic
523
technology emerges as a promising technique to non-destructively detect and continuously
524
monitor insects in stored food grains.
525
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526
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33
5% 20% 45%
30%
Weeds
1 2
Insects
Disease
Others
Figure 1: Globally total annual loss in agricultural produce (Oerke, 2006)
3 4
Lid
5
Inner Perforated Cylinder Outer cylinder
Perforated Cone
Perforated Bottom Insect collection bowl
Insect Collection
6 7
Lid
(a)
(b)
8 9 10
1
11 12 Hanger
13
Hopper Outer Cylinder
14
UV Light
15 Perforated Cylinder
Reflector
16 17
Outlet for Clean Grain
Outlet for insects
Motor
18 19
Cone
(c)
Insect collection Bowl
20
(d)
21 22
Figure 2: (a) Indicator device, (b) TNAU automatic insect removal bin, (c) Insect Egg Removal Device, (d) Ultra Violet Light (d)
23
Trap (with permission from Mohan et al., 1994)
24
2
Feature extraction or interpretation Image store
System controlling and decision making
Digitizer
25 26
Figure 3 : Block diagram of a machine vision system (adopted from Singh et al., 2004 and Patel et al., 2012)
27
3
28
Figure 4: X-ray images of pecans with different visible traits. (a) Good nut; (b) insect damage to one cotyledon from inside; (c)
29
visible insect hole; (d) insect damage and insect (with permission from Kotwaliwale et al., 2007a)
30
31 32
Figure 5: Grayscale representation of pseudo color images of non-fungal samples at (a) 0 s, (b) 180 s, (c) 210 s and fungal samples at
33
(d) 0 s, (e) 180 s, (f) 210 s.
34 35 36 37 4
38 39 40 41 Amplifier
42
Digitizer
43
Filter
44 Impulse Converter
45 46 47 48
Adjust detectable threshold Sensors Computer
Documentation
49
Figure 6: Schematic representation of the acoustical probe and signal processing system for detection of insect infestation in grains
50
(adopted from Fleurat-Lessard, 2006)
51
5
Table-1: Characters for insect inspection in storage structures
1
Character
Specification
C - Clear or none
Number of insects
No insects
Require protection from cross-infestation and regular inspection.
F - Few or light
Irregular occurrence of few numbers of < 20 insects per 90 kg sieved sample for a few notations insects. Absence of insects in sacks
(requires disinfestation in near future). 20-300 insects per 90 kg sieve sample for light notation.
MN - Moderate numbers
Regular occurrence and formation of small 50-300 insects per 90 kg sieved sample. population of insects
LN - Large numbers
Large number of insects creeping on the 300-1500 insects per 80 kg sieved sample. stack surface
VLN
-
numbers
Very
large Intense occurrence of insects, audible and >1500 insects per 90 kg sieved sample. dead skins seen around the stalk (Source: Semple, 1980)
1
Table-2: Advantages and limitations of modern methods of insect detection in stored food grains Insect Detection Advantages
Limitations
References
Methods 1 Conductance based method 1.1 Electrically
Suitable for detection of hidden Time-consuming as it inspects a single grain, Brabec et al. 2012,
conductive roller mill
infestation, inexpensive
not
suitable for large capacity, unable to 2017;
Pearson
and
detect the egg, larvae stages and dead Brabec, 2007 insects, not suitable for low moisture content sample 2 Olfactory based methods Dynamic headspace increases Costly, detects only adults insects and not Laopongsit,
et al.,
2.1 Solid phase micro the sensitivity, high sensitivity
suitable for immature insects, requires a 2014; Niu et al., 2016
extraction skilled person Automatic,
non-destructive, Expensive, necessity of long-term training of Magan
and
Evans,
2.2 Electronic Nose suitable for hidden infestation device, use of complicated data fusion 2000; Wu et al.,2013; 2
and mold, rapid, in-situ, suitable techniques, expensive sensors affected by Zhou and Wang, 2011 for early detection
environmental factors and need replacement after some time, cannot detect all species of insects
3.
Electromagnetic spectrum based methods
3.1 Imaging methods Suitable for identification and Expensive, inadequate to detect the dead and Zayas and Flinn, 1998; classification of varieties, insect internal insects, unable to classify the species Miranda et al., 2014, 3.1.1
Machine
Vision infestation, grain discoloration, of insects
Vithu
used for grading of agricultural
2016
and Moses,
within visible range produce Direct method, non-destructive, Inadequate to detect insect egg, high cost, Karunakaran high 3.1.2 X-ray imaging
accuracy,
adequate
to requires
skilled
detect the internal and external measures to operate insects, capable to detect both live and dead insects 3
workers,
need
et
al.,
safety 2003; Kotwaliwale et al., 2007
Suitable to detect all the stages Time-consuming, unable to categorize the Nanje
Gowda
and
of insects, identify the infested mixed variety of grains, the camera is Alagusundaram, 2013 3.1.3 Thermal Imaging and uninfested grains
expensive, cannot identify the development stages of insects
3.2 Non-imaging methods Automatic, 3.2.1
Electronic
real-time Sophisticated system requires a skilled Shuman and Epsky,
Grain monitoring, suitable for bulk person to operate, expensive, unable to 2001; Flinn
et
al.,
Probe Insect Counter storage at any depth
detect the dead insects
2009
Rapid method, detect hidden High cost and required trained person, Neethirajan 3.2.2 NIR Spectroscopy
insect infestation
inadequate to detect low levels of infestation, 2007; requires calibration and care of equipment
4
et
Maghirang
al., et
al., 2003
Acoustic based method Non-destructive,
4.1 Acoustic Detection
detect
internal
automatic, Cannot detect eggs and dead insects, requires Eliopoulos et al., 2015; and
external sound
and
vibration-insulated
structure, Fleurat-Lessard et al.
insects, high sensitivity, suitable detects within a suitable range, sophisticated 2006; Mankin, 2012;
4
for taking reliable decision in equipment silos, estimate density of insects 2
5
Pearson et al. 2007