A Novel Riemannian Sparse Representation Learning Network for Polarimetric SAR Image Classification
Junfei Shi, Mengmeng Nie, Weisi Lin, Haiyan Jin, Junhuai Li, Rui Wang

TL;DR
This paper introduces a Riemannian sparse representation learning network tailored for PolSAR image classification, effectively leveraging the geometric structure of covariance matrices on Riemannian manifolds to improve accuracy.
Contribution
It proposes a novel Riemannian sparse representation model and an unfolded deep network that directly uses covariance matrices, enhancing classification by respecting their geometric properties.
Findings
Outperforms state-of-the-art methods in accuracy
Preserves edge details and region homogeneity
Effectively utilizes Riemannian geometry for feature learning
Abstract
Deep learning is an effective end-to-end method for Polarimetric Synthetic Aperture Radar(PolSAR) image classification, but it lacks the guidance of related mathematical principle and is essentially a black-box model. In addition, existing deep models learn features in Euclidean space, where PolSAR complex matrix is commonly converted into a complex-valued vector as the network input, distorting matrix structure and channel relationship. However, the complex covariance matrix is Hermitian positive definite (HPD), and resides on a Riemannian manifold instead of a Euclidean one. Existing methods cannot measure the geometric distance of HPD matrices and easily cause some misclassifications due to inappropriate Euclidean measures. To address these issues, we propose a novel Riemannian Sparse Representation Learning Network (SRSR CNN) for PolSAR images. Firstly, a superpixel-based Riemannian…
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