Abstract

Plant diseases have a significant impact on global food security and the world's agricultural economy. Their early detection and classification increase the chances of setting up effective control measures, which is why the search for automatic systems that allow this is of major interest to our society. Several recent studies have reported promising results in the classification of plant diseases from RGB images on the basis of Convolutional Neural Networks (CNN). These studies have been successfully experimented on a large number of crops and symptoms, and they have shown significant advantages in the support of human expertise. However, the CNN models still have limitations. In particular, CNN models do not necessarily focus on the visible parts affected by a plant disease to allow their classification, and they can sometimes take into account irrelevant backgrounds or healthy plant parts. In this paper, we therefore develop a new technique based on a Recurrent Neural Network (RNN) to automatically locate infected regions and extract relevant features for disease classification. We show experimentally that our RNN-based approach is more robust and has a greater ability to generalize to unseen infected crop species as well as to different plant disease domain images compared to classical CNN approaches. We also analyze the focus of attention as learned by our RNN and show that our approach is capable of accurately locating infectious diseases in plants. Our approach, which has been tested on a large number of plant species, should thus contribute to the development of more effective means of detecting and classifying crop pathogens in the near future.

Highlights

  • Plant diseases are a major threat to agricultural production, causing severe food recessions and affecting crop quality (Bhange and Hingoliwala, 2015)

  • By examining the accuracy of the Plant Village (PV)-Seen Crop (SC) test set, we can see that both Convolutional Neural Networks (CNN) models and our new attention-based Recurrent Neural Network (RNN) achieved very high accuracy values

  • We believe that this is due to a change in the data distribution between the PV data and the IPM-SC and BING-SC test sets, as the two data are collected under different conditions, and the disease training data are not sufficiently diverse to cover the ranges of visual appearance of the disease found in the unseen crop

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Summary

Introduction

Plant diseases are a major threat to agricultural production, causing severe food recessions and affecting crop quality (Bhange and Hingoliwala, 2015). To detect plant diseases in crops, plant pathologists generally use molecular and serological methods or measurements of various parameters, such as morphological change, temperature change, change in transpiration rate, or volatile organic compound emission from infected plants (Fang et al, 2015). It is an effective means of controlling plant diseases, consulting experts is a costly and time-consuming process, especially since it is not always easy to bring an expert in time. Attention Based RNN for Plant Disease Classification before the disease spreads to the crops. Researchers fine-tune off-the-shelf Convolutional Neural Networks (CNNs) (Saleem et al, 2019)

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