Frontiers in Plant Science (Oct 2022)

Evaluation of rice bacterial blight severity from lab to field with hyperspectral imaging technique

  • Xiulin Bai,
  • Yujie Zhou,
  • Xuping Feng,
  • Mingzhu Tao,
  • Jinnuo Zhang,
  • Shuiguang Deng,
  • Binggan Lou,
  • Guofeng Yang,
  • Qingguan Wu,
  • Li Yu,
  • Yong Yang,
  • Yong He

DOI
https://doi.org/10.3389/fpls.2022.1037774
Journal volume & issue
Vol. 13

Abstract

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Hyperspectral imaging technique combined with machine learning is a powerful tool for the evaluation of disease phenotype in rice disease-resistant breeding. However, the current studies are almost carried out in the lab environment, which is difficult to apply to the field environment. In this paper, we used visible/near-infrared hyperspectral images to analysis the severity of rice bacterial blight (BB) and proposed a novel disease index construction strategy (NDSCI) for field application. A designed long short-term memory network with attention mechanism could evaluate the BB severity robustly, and the attention block could filter important wavelengths. Best results were obtained based on the fusion of important wavelengths and color features with an accuracy of 0.94. Then, NSDCI was constructed based on the important wavelength and color feature related to BB severity. The correlation coefficient of NDSCI extended to the field data reached -0.84, showing good scalability. This work overcomes the limitations of environmental conditions and sheds new light on the rapid measurement of phenotype in disease-resistant breeding.

Keywords