Riemannian kernel based NystrΓΆm method for approximate infinite-dimensional covariance descriptors with application to image set classification

June 16, 2018 Β· Declared Dead Β· πŸ› International Conference on Pattern Recognition

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Authors Kai-Xuan Chen, Xiao-Jun Wu, Rui Wang, Josef Kittler arXiv ID 1806.06177 Category cs.CV: Computer Vision Citations 10 Venue International Conference on Pattern Recognition Last Checked 3 months ago
Abstract
In the domain of pattern recognition, using the CovDs (Covariance Descriptors) to represent data and taking the metrics of the resulting Riemannian manifold into account have been widely adopted for the task of image set classification. Recently, it has been proven that infinite-dimensional CovDs are more discriminative than their low-dimensional counterparts. However, the form of infinite-dimensional CovDs is implicit and the computational load is high. We propose a novel framework for representing image sets by approximating infinite-dimensional CovDs in the paradigm of the NystrΓΆm method based on a Riemannian kernel. We start by modeling the images via CovDs, which lie on the Riemannian manifold spanned by SPD (Symmetric Positive Definite) matrices. We then extend the NystrΓΆm method to the SPD manifold and obtain the approximations of CovDs in RKHS (Reproducing Kernel Hilbert Space). Finally, we approximate infinite-dimensional CovDs via these approximations. Empirically, we apply our framework to the task of image set classification. The experimental results obtained on three benchmark datasets show that our proposed approximate infinite-dimensional CovDs outperform the original CovDs.
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