Mapping of circular or elliptical vegetation community patches: A comparative use of SPOT-5, ALOS And ZY-3 imagery

Yunjie Zhang, Qingsheng Liu, Gaohuan Liu, Shengjun Tang
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引用次数: 10

Abstract

Vegetation patches are one of the important components of arid and semi-arid ecosystems. Monitoring and mapping vegetation patches are essential for studying its succession mechanism. This study is aimed at comparing the differences between SPOT-5, ALOS and ZY-3 imagery and then showing the potential of them in recognizing vegetation patches. In this study, we deal with the three kinds of images with the method of object-oriented classification so as to extract circular or elliptical vegetation community patches of the two study areas. The results show that SPOT-5 imagery is of the highest segmentation accuracy, followed by ZY-3, and then ALOS. Then detailed analysis is carried out from four perspectives, which are statistical results of bands, NDVI distribution, image information entropy and sharpness and the conclusion is that the segmentation accuracy of each image is related to its NDVI distribution and articulation. Besides, ZY-3 imagery has the most balanced wave energy, the highest grey level and the richest information of the three. With good display effect and low price, ZY-3 imagery will be of great application potential in the field of remote sensing of vegetation.
圆形或椭圆形植被群落斑块的制图:SPOT-5、ALOS和ZY-3影像的比较使用
植被斑块是干旱半干旱生态系统的重要组成部分之一。植被斑块的监测和制图是研究其演替机制的基础。本研究旨在比较SPOT-5、ALOS和ZY-3影像之间的差异,从而展示它们在识别植被斑块方面的潜力。在本研究中,我们采用面向对象的分类方法对这三种图像进行处理,提取两个研究区的圆形或椭圆形植被群落斑块。结果表明,SPOT-5图像分割精度最高,ZY-3次之,ALOS次之。然后从波段统计结果、NDVI分布、图像信息熵和清晰度四个角度进行详细分析,得出每张图像的分割精度与其NDVI分布和清晰度相关的结论。此外,ZY-3图像具有波能最均衡、灰度最高、信息最丰富的特点。ZY-3影像显示效果好,价格低廉,在植被遥感领域具有很大的应用潜力。
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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