School of Electrical and Information Engineering, Jiangsu University, Zhenjiang, China.
State Key Laboratory of Rice Biology, China National Rice Research Institute, Hangzhou, China.
J Sci Food Agric. 2020 Jul;100(9):3608-3621. doi: 10.1002/jsfa.10383. Epub 2020 Apr 22.
Rice blast fungus is a worldwide disease, and it is one of the most serious rice diseases in the north and south rice fields in China. The initial symptoms of rice blast are not obvious, and the speed of transmission is fast. Manual identification is time-consuming and laborious. At present, it is a great challenge to realize rapid and accurate early identification of rice blast.
In this paper, an identification method based on crop disease spores' diffraction fingerprint texture for rice blast was studied; this method utilizes the light field and texture features of diffraction images. To verify the reliability of the model that we proposed, we selected two methods of manual identification and machine recognition to compare and detect rice blast spores. The experimental results show that the identification of light diffraction characteristics is not only higher than the traditional manual recognition by microscope (increased by more than 0.3%), but also faster after neural network training (increased by more than 90%). The diffraction recognition method used in this study, based on crop disease spores' diffraction fingerprint texture, can be completed in a few seconds, and its test accuracy is 97.18%.
The proposed method, a rapid rice blast detection and identification method based on crop disease spores' diffraction fingerprint texture, has certain advantages compared with the existing manual identification by microscope. This method can be applied to the recognition of rice blast in agricultural research. © 2020 Society of Chemical Industry.
稻瘟病菌是一种世界性病害,在中国南北稻区都是最严重的稻病之一。稻瘟病的初期症状不明显,传播速度快。人工鉴定既费时又费力。目前,实现稻瘟病的快速准确早期识别是一个巨大的挑战。
本文研究了一种基于作物病害孢子的光场和纹理特征的稻瘟病识别方法。为了验证我们提出的模型的可靠性,我们选择了两种手动识别和机器识别的方法进行比较和检测稻瘟病孢子。实验结果表明,光衍射特征的识别不仅高于传统的显微镜手动识别(提高了 0.3%以上),而且经过神经网络训练后速度更快(提高了 90%以上)。本研究中使用的基于作物病害孢子的光场和纹理特征的衍射识别方法,可以在几秒钟内完成,其测试精度为 97.18%。
与现有的显微镜手动识别方法相比,提出的基于作物病害孢子的光场和纹理特征的快速稻瘟病检测和识别方法具有一定的优势。该方法可应用于农业研究中的稻瘟病识别。© 2020 英国化学学会。