Abstract

Locusts are agricultural pests found in many parts of the world. Developing efficient and accurate locust information acquisition techniques helps in understanding the relation between locust distribution density and structural changes in locust communities. It also helps in understanding the hydrothermal and vegetation growth conditions that affect locusts in their habitats in various parts of the world as well as in providing rapid and accurate warnings on locust plague outbreak. This study is a preliminary attempt to explore whether the batch normalization-based convolutional neural network (CNN) model can be applied used to perform automatic classification of East Asian migratory locust (AM locust), Oxya chinensis (rice locusts), and cotton locusts. In this paper, we present a way of applying the CNN technique to identify species and instars of locusts using the proposed ResNet-Locust-BN model. This model is based on the ResNet architecture and involves introduction of a BatchNorm function before each convolution layer to improve the network’s stability, convergence speed, and classification accuracy. Subsequently, locust image data collected in the field were used as input to train the model. By performing comparison experiments of the activation function, initial learning rate, and batch size, we selected ReLU as the preferred activation function. The initial learning rate and batch size were set to 0.1 and 32, respectively. Experiments performed to evaluate the accuracy of the proposed ResNet-Locust-BN model show that the model can effectively distinguish AM locust from rice locusts (93.60% accuracy) and cotton locusts (97.80% accuracy). The model also performed well in identifying the growth status information of AM locusts (third-instar (77.20% accuracy), fifth-instar (88.40% accuracy), and adult (93.80% accuracy)) with an overall accuracy of 90.16%. This is higher than the accuracy scores obtained by using other typical models: AlexNet (73.68%), GoogLeNet (69.12%), ResNet 18 (67.60%), ResNet 50 (80.84%), and VggNet (81.70%). Further, the model has good robustness and fast convergence rate.

Highlights

  • Locusts are agricultural pests found in many parts of the worldwide [1]

  • In September 2017, AM locusts wiped out nearly 66 ha of crops in Shandong Province, and in July 2015, an AM locust plague covering an area of nearly 8200 km2 occurred in the city of Chifeng in the Inner Mongolia autonomous region

  • We observed that the proposed model can identify the growth status information of AM locusts with an overall accuracy of 90.16%, which is higher than the accuracies reported for the AlexNet, GoogLeNet, ResNet 18, ResNet 50, and VggNet convolutional neural network (CNN) models

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Summary

Introduction

Locusts are agricultural pests found in many parts of the worldwide [1]. 50 million km of the total land area is infested by locusts each year, and about one-eighth (1/8) of the world’s population is affected by locust plagues [2]. In the last 2500 years, China has suffered from frequent locust plagues; the extent and severity of which have been the highest in the world. Insects 2020, 11, 458 locust types, East Asian migratory locusts (AM locusts), which appear suddenly and are migratory in nature, cause the most severe damage [3]. In September 2017, AM locusts wiped out nearly 66 ha of crops in Shandong Province, and in July 2015, an AM locust plague covering an area of nearly 8200 km occurred in the city of Chifeng in the Inner Mongolia autonomous region. Rapidly and accurately acquiring information concerning the growth conditions, distribution densities, and community features of locusts are important for the timely and effective prevention and control of locust plagues

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