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利用深度学习和高光谱成像技术对水稻恶苗病进行早期监测。

Early surveillance of rice bakanae disease using deep learning and hyperspectral imaging.

作者信息

Chen Sishi, Lu Xuqi, Fang Hongda, Perumal Anand Babu, Li Ruyue, Feng Lei, Wang Mengcen, Liu Yufei

机构信息

College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, 310058 China.

State Key Laboratory of Rice Biology and Breeding, Zhejiang University, Hangzhou, 310058 China.

出版信息

aBIOTECH. 2024 May 21;5(3):281-297. doi: 10.1007/s42994-024-00169-1. eCollection 2024 Sep.

Abstract

UNLABELLED

Bakanae disease, caused by , poses a significant threat to rice production and has been observed in most rice-growing regions. The disease symptoms caused by different pathogens may vary, including elongated and weak stems, slender and yellow leaves, and dwarfism, as example. Bakanae disease is likely to cause necrosis of diseased seedlings, and it may cause a large area of infection in the field through the transmission of conidia. Therefore, early disease surveillance plays a crucial role in securing rice production. Traditional monitoring methods are both time-consuming and labor-intensive and cannot be broadly applied. In this study, a combination of hyperspectral imaging technology and deep learning algorithms were used to achieve in situ detection of rice seedlings infected with bakanae disease. Phenotypic data were obtained on the 9th, 15th, and 21st day after rice infection to explore the physiological and biochemical performance, which helps to deepen the research on the disease mechanism. Hyperspectral data were obtained over these same periods of infection, and a deep learning model, named Rice Bakanae Disease-Visual Geometry Group (RBD-VGG), was established by leveraging hyperspectral imaging technology and deep learning algorithms. Based on this model, an average accuracy of 92.2% was achieved on the 21st day of infection. It also achieved an accuracy of 79.4% as early as the 9th day. Universal characteristic wavelengths were extracted to increase the feasibility of using portable spectral equipment for field surveillance. Collectively, the model offers an efficient and non-destructive surveillance methodology for monitoring bakanae disease, thereby providing an efficient avenue for disease prevention and control.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s42994-024-00169-1.

摘要

未标注

由[病原菌名称未给出]引起的恶苗病对水稻生产构成重大威胁,已在大多数水稻种植地区被观察到。由不同病原体引起的病害症状可能有所不同,例如茎细长且脆弱、叶片细长发黄以及矮化等。恶苗病很可能导致病苗坏死,并且可能通过分生孢子的传播在田间造成大面积感染。因此,早期病害监测对保障水稻生产起着至关重要的作用。传统的监测方法既耗时又费力,无法广泛应用。在本研究中,将高光谱成像技术与深度学习算法相结合,用于对感染恶苗病的水稻幼苗进行原位检测。在水稻感染后的第9天、第15天和第21天获取表型数据,以探究生理生化表现,这有助于深化对病害机制的研究。在相同的感染时期获取高光谱数据,并利用高光谱成像技术和深度学习算法建立了一个名为水稻恶苗病-视觉几何组(RBD-VGG)的深度学习模型。基于该模型,在感染后的第21天平均准确率达到了92.2%。早在第9天就达到了79.4%的准确率。提取了通用特征波长,以提高使用便携式光谱设备进行田间监测的可行性。总体而言,该模型为监测恶苗病提供了一种高效且无损的监测方法,从而为病害防控提供了一条有效途径。

补充信息

在线版本包含可在10.1007/s42994-024-00169-1获取的补充材料。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7ca/11399517/15f451029067/42994_2024_169_Fig1_HTML.jpg

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