2019
DOI: 10.1109/access.2019.2909522
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PestNet: An End-to-End Deep Learning Approach for Large-Scale Multi-Class Pest Detection and Classification

Abstract: Multi-class pest detection is one of the crucial components in pest management involving localization in addition to classification which is much more difficult than generic object detection because of the apparent differences among pest species. This paper proposes a region-based end-to-end approach named PestNet for large-scale multi-class pest detection and classification based on deep learning. PestNet consists of three major parts. First, a novel module channel-spatial attention (CSA) is proposed to be fu… Show more

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Cited by 208 publications
(105 citation statements)
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References 36 publications
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“…In addition their 11 method was conducted on a computer with a powerful graphics card and CPU that may not be easily available to a wide diversity of human operators. Liu et al 12 used a novel detection network to detect a number of pests in laboratory settings. Their algorithm achieves 75% mean accuracy precision for their bounding boxes.…”
mentioning
confidence: 99%
“…In addition their 11 method was conducted on a computer with a powerful graphics card and CPU that may not be easily available to a wide diversity of human operators. Liu et al 12 used a novel detection network to detect a number of pests in laboratory settings. Their algorithm achieves 75% mean accuracy precision for their bounding boxes.…”
mentioning
confidence: 99%
“…The model outperformed a CNN trained from scratch, likely due to the relatively small dataset size, which did not contain enough information for proper full model training. A four-part deep learning approach was used in [47] for classification of 16 butterfly species in images of traps. First, channel-spatial attention (CSA) was fused into the CNN backbone for feature extraction and enhancement.…”
Section: Pest Classification Methodsmentioning
confidence: 99%
“…Situations like this can be very challenging, often leading pest numbers to be considerably underestimated [34,39,40]. Some image processing techniques are capable of partially separating clusters [62], and some deep learning models can successfully deal with crowded images [47]. However, depending on the degree of overlapping, the only solution may be applying statistical correction techniques.…”
Section: Difficulties Related To the Strategy Adopted-images Of Trapsmentioning
confidence: 99%
“…The Random Subspace Classifier (RSC) and Limited Receptive Area (LIRA) recognition rate of 89% and 88% respectively during the study of automatic pest detection on bean and potato crops [7]. There was 75.46% mean average precision (mAP) recorded during similar work of PestNet with large dataset of 80k images with over 580k pests categorized in 16 classes [17].…”
Section: Fig 3total Loss Function During Transfer Learning Of (A) Smentioning
confidence: 99%