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Tensorial Independent Component Analysis-Based Feature Extraction for Polarimetric SAR Data Classification

机译:基于张量独立分量分析的极化SAR数据分类特征提取

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For polarimetric synthetic aperture radar (PolSAR) data, various polarimetric signatures can be obtained by target decomposition techniques, which are of great help for characterizing the land cover. It is straightforward to combine these polarimetric features together and formulate them as a third-order polarimetric feature tensor. However, how to make full use of the abundant information provided by these polarimetric features remains a challenge. A feasible solution is applying feature extraction (FE) techniques on the high-dimensional polarimetric manifold to obtain a lower dimensional intrinsic feature set. Common FE methods, such as principal component analysis (PCA), independent component analysis (ICA), etc., use matrix linear algebra and require rearranging the original tensor into a matrix. This leads to the loss of the spatial information of the PolSAR data. In this paper, to jointly take advantage of the spatial and feature information, a novel FE scheme incorporating ICA with the tensor decomposition techniques is proposed. After applying the proposed FE method on the third-order polarimetric feature tensor, each PolSAR image pixel is represented by a low-dimensional intrinsic feature vector. Furthermore, these feature vectors are fed to the -nearest neighbor (KNN) classifier and support-vector-machine classifier for supervised classification. Simulated data, together with two measured data sets, i.e., of Airborne Synthetic Aperture Radar (AIRSAR) and of Uninhabited Aerial Vehicle Synthetic Aperture Radar (UAVSAR), are utilized to evaluate the performance of the proposed method. For comparison purpose, several classical and advanced FE methods, such as PCA, ICA, Laplacian eigenmaps, and
机译:对于极化合成孔径雷达(PolSAR)数据,可以通过目标分解技术获得各种极化特征,这对于表征土地覆盖物很有帮助。将这些偏振特征组合在一起并将其公式化为三阶偏振特征张量很简单。然而,如何充分利用这些偏振特征所提供的丰富信息仍然是一个挑战。一种可行的解决方案是在高维极化流形上应用特征提取(FE)技术以获得低维固有特征集。常用的有限元方法,例如主成分分析(PCA),独立成分分析(ICA)等,都使用矩阵线性代数,并且需要将原始张量重新排列为矩阵。这导致PolSAR数据的空间信息丢失。在本文中,为了共同利用空间和特征信息,提出了一种结合ICA和张量分解技术的新型有限元方案。将提出的有限元方法应用于三阶极化特征张量后,每个PolSAR图像像素都由低维固有特征向量表示。此外,这些特征向量被馈送到-NNN(KNN)分类器和支持向量机分类器以进行监督分类。模拟数据以及两个测量数据集,即机载合成孔径雷达(AIRSAR)和无人飞行器合成孔径雷达(UAVSAR),用于评估该方法的性能。为了进行比较,使用了几种经典的和高级的有限元方法,例如PCA,ICA,拉普拉斯特征图和

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