Abstract

The accurate classification of crop pests and diseases is essential for their prevention and control. However, datasets of pest and disease images collected in the field usually exhibit long-tailed distributions with heavy category imbalance, posing great challenges for a deep recognition and classification model. This paper proposes a novel convolutional rebalancing network to classify rice pests and diseases from image datasets collected in the field. To improve the classification performance, the proposed network includes a convolutional rebalancing module, an image augmentation module, and a feature fusion module. In the convolutional rebalancing module, instance-balanced sampling is used to extract features of the images in the rice pest and disease dataset, while reversed sampling is used to improve feature extraction of the categories with fewer images in the dataset. Building on the convolutional rebalancing module, we design an image augmentation module to augment the training data effectively. To further enhance the classification performance, a feature fusion module fuses the image features learned by the convolutional rebalancing module and ensures that the feature extraction of the imbalanced dataset is more comprehensive. Extensive experiments in the large-scale imbalanced dataset of rice pests and diseases (18,391 images), publicly available plant image datasets (Flavia, Swedish Leaf, and UCI Leaf) and pest image datasets (SMALL and IP102) verify the robustness of the proposed network, and the results demonstrate its superior performance over state-of-the-art methods, with an accuracy of 97.58% on rice pest and disease image dataset. We conclude that the proposed network can provide an important tool for the intelligent control of rice pests and diseases in the field.

Highlights

  • In modern agricultural production, the accurate classification of crop pests and diseases is essential for their prevention and control

  • In order to improve the performance of rice pest and disease classification, we propose a convolutional rebalancing network (CRN), which includes a convolutional rebalancing module (CRM), an image augmentation module (IAM), and a feature fusion module (FFM)

  • This paper has proposed a CRN in order to study the classification of rice pest and disease images in imbalanced datasets

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Summary

INTRODUCTION

The accurate classification of crop pests and diseases is essential for their prevention and control. Most of the researches on DL for rice pest and disease classification uses a convolutional neural network (CNN) based on transfer learning technology (Burhan et al, 2020; Chen et al, 2020, 2021; Mathulaprangsan et al, 2020) These models have achieved a high level of accuracy in their respective studies, they rely mainly on two dataset features to achieve their results. Based on the combination of the two sampling methods, we propose a novel convolutional rebalancing module for comprehensively extracting the features of the large-scale imbalanced dataset of rice pests and diseases to exhaustively boosting classification. Experiments in the large-scale imbalanced dataset of rice pests and diseases and five related benchmark visual classification datasets demonstrate our proposed network can significantly improve the classification accuracy of imbalanced image datasets, which surpasses previous competing approaches

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