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A Comparison Study of Different Kernel Functions for SVM-based Classification of Multi-temporal Polarimetry SAR Data

机译:基于SVM的多时间偏振SAR数据的不同内核函数的比较研究

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In this paper, a framework is developed based on Support Vector Machines (SVM) for crop classification using polarimetric features extracted from multi-temporal Synthetic Aperture Radar (SAR) imageries. The multi-temporal integration of data not only improves the overall retrieval accuracy but also provides more reliable estimates with respect to single-date data. Several kernel functions are employed and compared in this study for mapping the input space to higher Hilbert dimension space. These kernel functions include linear, polynomials and Radial Based Function (RBF). The method is applied to several UAVSAR L-band SAR images acquired over an agricultural area near Winnipeg, Manitoba, Canada. In this research, the temporal alpha features of H/A/α decomposition method are used in classification. The experimental tests show an SVM classifier with RBF kernel for three dates of data increases the Overall Accuracy (OA) to up to 3% in comparison to using linear kernel function, and up to 1% in comparison to a 3rd degree polynomial kernel function.
机译:在本文中,基于支持向量机(SVM)开发了一种用于使用从多时间合成孔径雷达(SAR)成像仪中提取的偏振特征的作物分类的支持向量机(SVM)开发了框架。数据的多时间集成不仅可以提高整体检索精度,而且还提供了关于单日数据的更可靠的估计。在该研究中使用了几个内核功能,并将输入空间映射到更高的Hilbert尺寸空间。这些内核功能包括线性,多项式和基于径向的功能(RBF)。该方法应用于加拿大曼尼托巴省曼尼托巴省温尼伯附近的农业区的几个UVSAR L波段SAR图像。在本研究中,分类中使用H / A /α分解方法的时间α特征。实验试验显示了具有RBF内核的SVM分类器,三个数据日期增加了与使用线性内核功能相比的总体精度(OA)至多3%,并且与第三度多项式内核功能相比,高达1%。

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