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结合多维卷积神经网络(CNN)与可视化方法,利用高光谱成像检测棉花叶片中的格洛弗感染。

Combining Multi-Dimensional Convolutional Neural Network (CNN) With Visualization Method for Detection of Glover Infection in Cotton Leaves Using Hyperspectral Imaging.

作者信息

Yan Tianying, Xu Wei, Lin Jiao, Duan Long, Gao Pan, Zhang Chu, Lv Xin

机构信息

College of Information Science and Technology, Shihezi University, Shihezi, China.

Key Laboratory of Oasis Ecology Agriculture, Shihezi University, Shihezi, China.

出版信息

Front Plant Sci. 2021 Feb 15;12:604510. doi: 10.3389/fpls.2021.604510. eCollection 2021.

Abstract

Cotton is a significant economic crop. It is vulnerable to aphids ( Glovers) during the growth period. Rapid and early detection has become an important means to deal with aphids in cotton. In this study, the visible/near-infrared (Vis/NIR) hyperspectral imaging system (376-1044 nm) and machine learning methods were used to identify aphid infection in cotton leaves. Both tall and short cotton plants (Lumianyan 24) were inoculated with aphids, and the corresponding plants without aphids were used as control. The hyperspectral images (HSIs) were acquired five times at an interval of 5 days. The healthy and infected leaves were used to establish the datasets, with each leaf as a sample. The spectra and RGB images of each cotton leaf were extracted from the hyperspectral images for one-dimensional (1D) and two-dimensional (2D) analysis. The hyperspectral images of each leaf were used for three-dimensional (3D) analysis. Convolutional Neural Networks (CNNs) were used for identification and compared with conventional machine learning methods. For the extracted spectra, 1D CNN had a fine classification performance, and the classification accuracy could reach 98%. For RGB images, 2D CNN had a better classification performance. For HSIs, 3D CNN performed moderately and performed better than 2D CNN. On the whole, CNN performed relatively better than conventional machine learning methods. In the process of 1D, 2D, and 3D CNN visualization, the important wavelength ranges were analyzed in 1D and 3D CNN visualization, and the importance of wavelength ranges and spatial regions were analyzed in 2D and 3D CNN visualization. The overall results in this study illustrated the feasibility of using hyperspectral imaging combined with multi-dimensional CNN to detect aphid infection in cotton leaves, providing a new alternative for pest infection detection in plants.

摘要

棉花是一种重要的经济作物。它在生长期间易受蚜虫(棉蚜)侵害。快速早期检测已成为应对棉花蚜虫的重要手段。在本研究中,使用可见/近红外(Vis/NIR)高光谱成像系统(376 - 1044 nm)和机器学习方法来识别棉花叶片上的蚜虫感染情况。对高、矮两种棉花植株(鲁棉研24)接种蚜虫,并将相应未接种蚜虫的植株作为对照。每隔5天采集一次高光谱图像(HSIs),共采集5次。利用健康叶片和感染叶片建立数据集,每片叶子作为一个样本。从高光谱图像中提取每片棉花叶子的光谱和RGB图像,进行一维(1D)和二维(2D)分析。每片叶子的高光谱图像用于三维(3D)分析。使用卷积神经网络(CNNs)进行识别,并与传统机器学习方法进行比较。对于提取的光谱,1D CNN具有良好的分类性能,分类准确率可达98%。对于RGB图像,2D CNN具有更好的分类性能。对于HSIs,3D CNN表现适中且优于2D CNN。总体而言,CNN的表现相对优于传统机器学习方法。在1D、2D和3D CNN可视化过程中,在1D和3D CNN可视化中分析了重要波长范围,在2D和3D CNN可视化中分析了波长范围和空间区域的重要性。本研究的总体结果表明,利用高光谱成像结合多维CNN检测棉花叶片蚜虫感染具有可行性,为植物病虫害感染检测提供了一种新的选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0915/7917247/08c25062bff8/fpls-12-604510-g001.jpg

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