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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Integrating Color Features in Polarimetric SAR Image Classification
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Integrating Color Features in Polarimetric SAR Image Classification

机译:在极化SAR图像分类中整合色彩特征

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Polarimetric synthetic aperture radar (PolSAR) data are used extensively for terrain classification applying SAR features from various target decompositions and certain textural features. However, one source of information has so far been neglected from PolSAR classification: Color. It is a common practice to visualize PolSAR data by color coding methods and thus, it is possible to extract powerful color features from such pseudocolor images so as to provide additional data for a superior terrain classification. In this paper, we first review previous attempts for PolSAR classifications using various feature combinations and then we introduce and perform in-depth investigation of the application of color features over the Pauli color-coded images besides SAR and texture features. We run an extensive set of comparative evaluations using 24 different feature set combinations over three images of the Flevoland- and the San Francisco Bay region from the RADARSAT-2 and the AIRSAR systems operating in C- and L-bands, respectively. We then consider support vector machines and random forests classifier topologies to test and evaluate the role of color features over the classification performance. The classification results show that the additional color features introduce a new level of discrimination and provide noteworthy improvement in classification performance (compared with the traditionally employed PolSAR and texture features) within the application of land use and land cover classification.
机译:极化合成孔径雷达(PolSAR)数据被广泛用于地形分类,其应用了来自各种目标分解和某些纹理特征的SAR特征。但是,到目前为止,从PolSAR分类中忽略了一种信息来源:颜色。通过颜色编码方法可视化PolSAR数据是一种常见的做法,因此,可以从此类伪彩色图像中提取强大的颜色特征,从而为高级地形分类提供额外的数据。在本文中,我们首先回顾了以前使用各种特征组合进行PolSAR分类的尝试,然后介绍了除SAR和纹理特征以外,在Pauli颜色编码图像上使用颜色特征并对其进行深入研究。我们分别使用RADARSAT-2和AIRSAR系统的C波段和L波段,在Flevoland和San Francisco Bay地区的三幅图像上使用24种不同的特征集组合,进行了广泛的比较评估。然后,我们考虑使用支持向量机和随机森林分类器拓扑来测试和评估颜色特征在分类性能中的作用。分类结果表明,在土地利用和土地覆被分类的应用中,附加的颜色特征引入了新的区分度,并在分类性能方面(与传统采用的PolSAR和纹理特征相比)显着提高。

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