[HTML][HTML] New perspectives on plant disease characterization based on deep learning

SH Lee, H Go�au, P Bonnet, A Joly�- Computers and Electronics in�…, 2020 - Elsevier
Computers and Electronics in Agriculture, 2020Elsevier
The control of plant diseases is a major challenge to ensure global food security and
sustainable agriculture. Several recent studies have proposed to improve existing
procedures for early detection of plant diseases through modern automatic image
recognition systems based on deep learning. In this article, we study these methods in
detail, especially those based on convolutional neural networks. We first examine whether it
is more relevant to fine-tune a pre-trained model on a plant identification task rather than a�…
Abstract
The control of plant diseases is a major challenge to ensure global food security and sustainable agriculture. Several recent studies have proposed to improve existing procedures for early detection of plant diseases through modern automatic image recognition systems based on deep learning. In this article, we study these methods in detail, especially those based on convolutional neural networks. We first examine whether it is more relevant to fine-tune a pre-trained model on a plant identification task rather than a general object recognition task. In particular, we show, through visualization techniques, that the characteristics learned differ according to the approach adopted and that they do not necessarily focus on the part affected by the disease. Therefore, we introduce a more intuitive method that considers diseases independently of crops, and we show that it is more effective than the classic crop-disease pair approach, especially when dealing with disease involving crops that are not illustrated in the training database. This finding therefore encourages future research to rethink the current de facto paradigm of crop disease categorization.
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