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Land Cover Classification for Synthetic Aperture Radar Imagery by Using Unsupervised Methods

机译:基于无监督方法的合成孔径雷达图像土地覆盖分类

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Land cover classification is an important application in remote sensing and it plays a critical role in urban planning, land cover change monitoring and agricultural monitoring. Synthetic aperture radar (SAR)has long been recognized as an effective sensing tool for land cover monitoring, because of its ability of capturing images day and night without affected by weather conditions. On the other hand, the interpretation of SAR imagery and to get many labeled SAR images are still a challenging problem for remote sensing. Therefore, the aim of this paper is the implementation of unsupervised classification methods which require unlabeled data and comparison of their performances. In order to achieve this goal, Vertical - Vertical (VV)and Vertical - Horizontal (VH)polarization Sentinel-l SAR images are used. The acquisition year of these images is 2018. Principal Component Analysis (PCA), Kernel PCA, Eigenface and Autoencoder feature extraction methods and also user defined features are implemented for unsupervised classification and the results have been reported and discussed. The performances of these methods are compared by using the cluster validity indices which is the criterion for unsupervised classification, and also the optimum cluster number is determined. Results demonstrate that, KPCA and Autoencoder methods are better for VH polarization. Also, user defined features and Autoencoder are better for VV polarization.
机译:土地覆被分类是遥感中的重要应用,在城市规划,土地覆被变化监测和农业监测中起着至关重要的作用。合成孔径雷达(SAR)一直被公认为有效的土地覆盖监测工具,因为它能够昼夜捕获图像而不受天气条件的影响。另一方面,SAR图像的解释以及获得许多标记的SAR图像对于遥感仍然是一个挑战性的问题。因此,本文的目的是实现需要无标签数据的无监督分类方法及其性能的比较。为了实现此目标,使用了垂直-垂直(VV)和垂直-水平(VH)极化Sentinel-1 SAR图像。这些图像的获取年份为2018年。对主成分分析(PCA),内核PCA,Eigenface和Autoencoder特征提取方法以及用户定义的特征进行了无监督分类,并报告和讨论了结果。使用作为非监督分类标准的聚类有效性指标比较了这些方法的性能,并确定了最佳聚类数。结果表明,KPCA和自动编码器方法对VH极化更好。此外,用户定义的功能和自动编码器更适合VV极化。

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