Analysis of the Influence of Vegetation Index Choice on the Classification of Satellite Images for Monitoring Forest Pathology

E. Trubakov, Olga Trubakova
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引用次数: 1

Abstract

Rational use of natural resources and control over their recovery, as well as over destruction due to natural and technogenic causes, is currently one of the most urgent problems of the humanity. Forests are no exception. Multispectral images from Earth’s satellites are most often used for monitoring changes in forest planting. This is due to the fact that merging images taken in certain spectra makes it possible to recognize vegetation containing chlorophyll quite well. It also allows to detect changes in the level of chlorophyll, which shows the differences between healthy and damaged plants. Large areas of planted forests create the need to process huge amounts of data, which is difficult to do manually. One of the most important stages of image processing is the classification of objects in these images. This paper deals with various classification methods used to solve the problem of classifying images of remote sensing of the Earth. As a result, it was decided to evaluate the accuracy of classification methods on various vegetation indices. In the course of the study, the evaluation algorithm was determined, as well as one of the options for analyzing the results obtained. Conclusions were made about the work of classification methods on different vegetation indices.
植被指数选择对森林病理监测卫星影像分类的影响分析
合理利用自然资源和控制其恢复,以及由于自然和技术原因造成的过度破坏,是目前人类最紧迫的问题之一。森林也不例外。来自地球卫星的多光谱图像最常用于监测森林种植的变化。这是因为在某些光谱中拍摄的合并图像可以很好地识别含有叶绿素的植被。它还可以检测叶绿素水平的变化,从而显示健康和受损植物之间的差异。大面积的人工林产生了处理大量数据的需求,这很难手工完成。图像处理中最重要的阶段之一是对这些图像中的对象进行分类。本文讨论了用于解决地球遥感图像分类问题的各种分类方法。因此,决定对各种植被指数的分类方法进行精度评价。在研究过程中,确定了评价算法,以及对所得结果进行分析的选项之一。对不同植被指数的分类方法的工作进行了总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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