基于Kohonen图的高光谱和多光谱荧光成像数据融合的植物病害检测

D. Moshou , C. Bravo , R. Oberti , J. West , L. Bodria , A. McCartney , H. Ramon
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引用次数: 183

摘要

本研究的目的是开发一种地面实时遥感系统,用于在田间条件下和疾病发展的早期阶段检测可耕种作物的疾病,然后才能明显地检测到疾病。这是通过传感器融合450和900 nm之间的高光谱反射信息和荧光成像来实现的。本文以冬小麦黄锈病为模型系统,对特色技术进行了试验研究。利用成像光谱仪在野外环境和环境光照条件下拍摄了健康植株和病株的高光谱反射图像。采用紫外-蓝激发法对同一株植物同时进行多光谱荧光成像。通过比较550 nm和690 nm的荧光图像,可以检测到疾病的存在。图像中被识别为病变的像素的比例被设置为最终的荧光疾病变量,称为病变指数(LI)。一种仅基于三个波段的光谱反射方法可以区分疾病和健康,总体误差约为11.3%。基于荧光的方法准确度较低,总体判别误差约为16.5%。然而,将两种方法的测量结果融合在一起,使用QDA可以使总体疾病与健康的区分率达到94.5%。使用自组织映射(SOM)神经网络进行数据融合,将总体分类误差降低到1%。讨论了基于som的疾病分类器在该领域快速再训练的可能实现。此外,还讨论了光谱和荧光图像的实时采集和处理。该多传感器融合病害检测系统可应用于田间植物病害的实时检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant disease detection based on data fusion of hyper-spectral and multi-spectral fluorescence imaging using Kohonen maps

The objective of this research was to develop a ground-based real-time remote sensing system for detecting diseases in arable crops under field conditions and in an early stage of disease development, before it can visibly be detected. This was achieved through sensor fusion of hyper-spectral reflection information between 450 and 900 nm and fluorescence imaging. The work reported here used yellow rust (Puccinia striiformis) disease of winter wheat as a model system for testing the featured technologies. Hyper-spectral reflection images of healthy and infected plants were taken with an imaging spectrograph under field circumstances and ambient lighting conditions. Multi-spectral fluorescence images were taken simultaneously on the same plants using UV-blue excitation. Through comparison of the 550 and 690 nm fluorescence images, it was possible to detect disease presence. The fraction of pixels in one image, recognized as diseased, was set as the final fluorescence disease variable called the lesion index (LI). A spectral reflection method, based on only three wavebands, was developed that could discriminate disease from healthy with an overall error of about 11.3%. The method based on fluorescence was less accurate with an overall discrimination error of about 16.5%. However, fusing the measurements from the two approaches together allowed overall disease from healthy discrimination of 94.5% by using QDA. Data fusion was also performed using a Self-Organizing Map (SOM) neural network which decreased the overall classification error to 1%. The possible implementation of the SOM-based disease classifier for rapid retraining in the field is discussed. Further, the real-time aspects of the acquisition and processing of spectral and fluorescence images are discussed. With the proposed adaptations the multi-sensor fusion disease detection system can be applied in the real-time detection of plant disease in the field.

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