Abstract

Insect pest control is considered as a significant factor in the yield of commercial crops. Thus, to avoid economic losses, we need a valid method for insect pest recognition. In this paper, we proposed a feature fusion residual block to perform the insect pest recognition task. Based on the original residual block, we fused the feature from a previous layer between two 1×1 convolution layers in a residual signal branch to improve the capacity of the block. Furthermore, we explored the contribution of each residual group to the model performance. We found that adding the residual blocks of earlier residual groups promotes the model performance significantly, which improves the capacity of generalization of the model. By stacking the feature fusion residual block, we constructed the Deep Feature Fusion Residual Network (DFF-ResNet). To prove the validity and adaptivity of our approach, we constructed it with two common residual networks (Pre-ResNet and Wide Residual Network (WRN)) and validated these models on the Canadian Institute For Advanced Research (CIFAR) and Street View House Number (SVHN) benchmark datasets. The experimental results indicate that our models have a lower test error than those of baseline models. Then, we applied our models to recognize insect pests and obtained validity on the IP102 benchmark dataset. The experimental results show that our models outperform the original ResNet and other state-of-the-art methods.

Highlights

  • Insect pest control has always been crucial problem for commercially important crops

  • We explore the number of 3 3 convolution layers in each residual block and the number of feature fusion residual blocks in each group affecting on model performance

  • Under a similar total number of parameters, we can construct a deeper model than Pre-Residual Networks (ResNets) through the stacking feature fusion residual block, which benefits to model performance

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Summary

Introduction

Insect pest control has always been crucial problem for commercially important crops. Detection of the insect pest species helps to decrease the damage they cause, which is significant for a stable agricultural economy and food security[1]. Early detection requires many trained experts to recognize insect pests, Deep learning has gained considerable attention in various domains, e.g., computer vision[5,6,7,8,9,10], natural language processing[11,12,13], emotion computing[14,15,16], etc. ResNets construct a deep residual network, which exceeds 1000+ layers and retains good considerable model performance. These results demonstrate that adding depth can improve the network performance effectively. An increasing number of deep residual network variants have emerged and constituted

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