Land Cover Classification Using Sentinel-1 SAR Data

Lucie Orlikova, J. Horák
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引用次数: 11

Abstract

With the development of remote sensing techniques, optical images become more efficient compare to field survey. However, the quality of optical images would influenced by cloud. Radar is known to be very sensitive to vegetation physiognomy and biomass. The sensitivity of synthetic aperture radar (SAR) to the structural features of terrain leads to landcover classification into simple and easily interpreted structural classes. In this paper, the potential of using free of charge Sentinel-1 SAR imagery for land cover mapping in the Moravian-Silesian region, is investigated. The images recorded in 2018 were used for a per-pixel and object-based classification of agricultural land. The per-pixel classification was performed by the maximum likelihood algorithm, the object-based classification then using the support vector machine algorithm. The legend was taken from the Land Parcel Identification System (LPIS) and contained the following three classes – grassland, arable land and a class that involves hop fields, vineyards, and orchards. Post processing of the classification results has been done using the confusion matrix (also known as error matrix) and corresponding overall accuracy and Kappa coefficients of all the classification methods have been calculated. Significantly better results were achieved through object-oriented classification. In both areas of interest, the highest processing and user precision was achieved for the arable land class.
基于Sentinel-1 SAR数据的土地覆盖分类
随着遥感技术的发展,光学影像比野外调查更加高效。但是,云的影响会影响光学图像的质量。众所周知,雷达对植被地貌和生物量非常敏感。由于合成孔径雷达(SAR)对地形结构特征的敏感性,使得地表覆盖分类变得简单且易于解释。本文研究了在摩拉维亚-西里西亚地区利用免费Sentinel-1 SAR影像进行土地覆盖制图的潜力。2018年记录的图像用于按像素和基于对象的农业用地分类。采用最大似然算法进行逐像素分类,再采用支持向量机算法进行基于对象的分类。这个传说取自土地地块识别系统(lpi),包含以下三类:草地、耕地和一类涉及啤酒花田、葡萄园和果园。利用混淆矩阵(也称误差矩阵)对分类结果进行后处理,计算出各种分类方法的总体精度和Kappa系数。通过面向对象的分类获得了明显更好的结果。在这两个感兴趣的领域,最高的处理和用户精度达到了耕地类。
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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