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PolSAR Land Cover Classification Based on Roll-Invariant and Selected Hidden Polarimetric Features in the Rotation Domain

机译:基于旋转不变性和旋转域中选定的隐藏极化特征的PolSAR土地覆盖分类

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Land cover classification is an important application for polarimetric synthetic aperture radar (PolSAR). Target polarimetric response is strongly dependent on its orientation. Backscattering responses of the same target with different orientations to the SAR flight path may be quite different. This target orientation diversity effect hinders PolSAR image understanding and interpretation. Roll-invariant polarimetric features such as entropy, anisotropy, mean alpha angle, and total scattering power are independent of the target orientation and are commonly adopted for PolSAR image classification. On the other aspect, target orientation diversity also contains rich information which may not be sensed by roll-invariant polarimetric features. In this vein, only using the roll-invariant polarimetric features may limit the final classification accuracy. To address this problem, this work uses the recently reported uniform polarimetric matrix rotation theory and a visualization and characterization tool of polarimetric coherence pattern to investigate hidden polarimetric features in the rotation domain along the radar line of sight. Then, a feature selection scheme is established and a set of hidden polarimetric features are selected in the rotation domain. Finally, a classification method is developed using the complementary information between roll-invariant and selected hidden polarimetric features with a support vector machine (SVM)/decision tree (DT) classifier. Comparison experiments are carried out with NASA/JPL AIRSAR and multi-temporal UAVSAR data. For AIRSAR data, the overall classification accuracy of the proposed classification method is 95.37% (with SVM)/96.38% (with DT), while that of the conventional classification method is 93.87% (with SVM)/94.12% (with DT), respectively. Meanwhile, for multi-temporal UAVSAR data, the mean overall classification accuracy of the proposed method is up to 97.47% (with SVM)/99.39% (with DT), which is also higher than the mean accuracy of 89.59% (with SVM)/97.55% (with DT) from the conventional method. The comparison studies clearly demonstrate the efficiency and advantage of the proposed classification methodology. In addition, the proposed classification method achieves better robustness for the multi-temporal PolSAR data. This work also further validates that added benefits can be gained for PolSAR data investigation by mining and utilization of hidden polarimetric information in the rotation domain.
机译:土地覆被分类是极化合成孔径雷达(PolSAR)的重要应用。目标极化响应在很大程度上取决于其方向。具有不同方向的同一目标对SAR飞行路径的反向散射响应可能会完全不同。这种目标方向的多样性效应阻碍了PolSAR图像的理解和解释。诸如熵,各向异性,平均α角和总散射功率之类的滚动不变极化特征与目标方向无关,并且通常用于PolSAR图像分类。另一方面,目标方位分集还包含丰富的信息,而滚动不变的极化特征可能无法感知这些信息。因此,仅使用滚动不变极化特征可能会限制最终的分类精度。为了解决这个问题,这项工作使用了最近报道的统一极化矩阵旋转理论和极化相干图案的可视化和表征工具,以研究雷达视线在旋转域中隐藏的极化特征。然后,建立特征选择方案,并在旋转域中选择一组隐藏的极化特征。最后,利用支持向量机(SVM)/​​决策树(DT)分类器,利用滚动不变特征和选定的隐藏极化特征之间的补充信息,开发了一种分类方法。使用NASA / JPL AIRSAR和多时间UAVSAR数据进行了比较实验。对于AIRSAR数据,建议的分类方法的总体分类准确度为95.37%(使用SVM)/​​96.38%(使用DT),而常规分类方法的整体分类准确性为93.87%(使用SVM)/​​94.12%(使用DT),分别。同时,对于多时相UAVSAR数据,该方法的平均总分类准确率高达97.47%(使用SVM)/​​99.39%(使用DT),也高于89.59%(使用SVM)的平均准确性。 /97.55%(使用DT),采用常规方法。比较研究清楚地表明了所提出的分类方法的效率和优势。另外,所提出的分类方法对于多时间PolSAR数据具有更好的鲁棒性。这项工作还进一步证实,通过挖掘和利用旋转域中隐藏的极化信息,可以为PolSAR数据调查获得更多好处。

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