Abstract

Various rice diseases threaten the growth of rice. It is of great importance to achieve the rapid and accurate detection of rice diseases for precise disease prevention and control. Hyperspectral imaging (HSI) was performed to detect rice leaf diseases in four different varieties of rice. Considering that it costs much time and energy to develop a classifier for each variety of rice, deep transfer learning was firstly introduced to rice disease detection across different rice varieties. Three deep transfer learning methods were adapted for 12 transfer tasks, namely, fine-tuning, deep CORrelation ALignment (CORAL), and deep domain confusion (DDC). A self-designed convolutional neural network (CNN) was set as the basic network of the deep transfer learning methods. Fine-tuning achieved the best transferable performance with an accuracy of over 88% for the test set of the target domain in the majority of transfer tasks. Deep CORAL obtained an accuracy of over 80% in four of all the transfer tasks, which was superior to that of DDC. A multi-task transfer strategy has been explored with good results, indicating the potential of both pair-wise, and multi-task transfers. A saliency map was used for the visualization of the key wavelength range captured by CNN with and without transfer learning. The results indicated that the wavelength range with and without transfer learning was overlapped to some extent. Overall, the results suggested that deep transfer learning methods could perform rice disease detection across different rice varieties. Hyperspectral imaging, in combination with the deep transfer learning method, is a promising possibility for the efficient and cost-saving field detection of rice diseases among different rice varieties.

Highlights

  • Rice is one of the most vital crops for human beings and is critical for maintaining food supply

  • As for transfer task 03→ 01, the accuracy of the validation set and the test set of the target domain was 93.75 and 86.67%, respectively, which was slightly lower than the accuracy (93.33%) of the fine-tuning method

  • Deep transfer learning was introduced for the first time to rice disease detection across different rice cultivars simultaneously

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Summary

Introduction

Rice is one of the most vital crops for human beings and is critical for maintaining food supply. The growth of rice is subjected to stresses that are biological and abiotic in nature. Diseases are one of the major threats to rice, causing severe losses in quality and yield (Yang et al, 2019). There are various diseases threatening rice growth, such as bacterial leaf blight, blast, and sheath blight, which are the three major diseases of rice (Kumar et al, 2020; Molla et al, 2020). After being infected with these different diseases, the change in the inner chemical composition of rice varies from variety to variety, with external symptoms of rice leaf varying.

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