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DCNet:一种基于高光谱成像和深度学习的亚洲大豆锈病检测模型

DCNet: An Asian Soybean Rust Detection Model Based on Hyperspectral Imaging and Deep Learning.

作者信息

Feng Jiarui, Zhang Shenghui, Zhai Zhaoyu, Yu Hongfeng, Xu Huanliang

机构信息

College of Artificial Intelligence, Nanjing Agricultural University, Nanjing, 210095, China.

College of Engineering, Nanjing Agricultural University, Nanjing, 210095, China.

出版信息

Plant Phenomics. 2024 Apr 5;6:0163. doi: 10.34133/plantphenomics.0163. eCollection 2024.

Abstract

Asian soybean rust (ASR) is one of the major diseases that causes serious yield loss worldwide, even up to 80%. Early and accurate detection of ASR is critical to reduce economic losses. Hyperspectral imaging, combined with deep learning, has already been proved as a powerful tool to detect crop diseases. However, current deep learning models are limited to extract both spatial and spectral features in hyperspectral images due to the use of fixed geometric structure of the convolutional kernels, leading to the fact that the detection accuracy of current models remains further improvement. In this study, we proposed a deformable convolution and dilated convolution neural network (DCNet) for the ASR detection. The deformable convolution module was used to extract the spatial features, while the dilated convolution module was applied to extract features from the spectral dimension. We also adopted the Shapley value and the channel attention methods to evaluate the importance of each wavelength during decision-making, thereby identifying the most contributing ones. The proposed DCNet can realize early asymptomatic detection of ASR even when visual symptoms have not appeared. The results of the experiment showed that the detection performance of DCNet dominated state-of-the-art methods, reaching an overall accuracy at 96.73%. Meanwhile, the experimental result suggested that the Shapley Additive exPlanations method was able to extract feature wavelengths correctly, thereby helping DCNet achieve reasonable performance with less input data. The research result of this study could provide early warning of ASR outbreak in advance, even at the asymptomatic period.

摘要

亚洲大豆锈病(ASR)是导致全球严重产量损失的主要病害之一,产量损失甚至高达80%。早期准确检测ASR对于减少经济损失至关重要。高光谱成像与深度学习相结合,已被证明是检测作物病害的有力工具。然而,由于卷积核采用固定的几何结构,当前的深度学习模型在提取高光谱图像的空间和光谱特征方面存在局限性,导致当前模型的检测精度仍有待进一步提高。在本研究中,我们提出了一种用于ASR检测的可变形卷积和扩张卷积神经网络(DCNet)。可变形卷积模块用于提取空间特征,而扩张卷积模块用于从光谱维度提取特征。我们还采用了Shapley值和通道注意力方法来评估决策过程中每个波长的重要性,从而识别出最具贡献的波长。所提出的DCNet即使在视觉症状尚未出现时也能实现对ASR的早期无症状检测。实验结果表明,DCNet的检测性能优于现有方法,总体准确率达到96.73%。同时,实验结果表明Shapley加性解释方法能够正确提取特征波长,从而帮助DCNet在输入数据较少的情况下实现合理的性能。本研究的结果可以提前对ASR爆发进行预警,即使在无症状期。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a44/10997487/5f151debb914/plantphenomics.0163.fig.001.jpg

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