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Extrinsic Kernel Ridge Regression Classifier for Planar Kendall Shape Space

2019-12-17Code Available0· sign in to hype

Hwiyoung Lee, Vic Patrangenaru

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Abstract

Kernel methods have had great success in Statistics and Machine Learning. Despite their growing popularity, however, less effort has been drawn towards developing kernel based classification methods on Riemannian manifolds due to difficulty in dealing with non-Euclidean geometry. In this paper, motivated by the extrinsic framework of manifold-valued data analysis, we propose a new positive definite kernel on planar Kendall shape space _2^k, called extrinsic Veronese Whitney Gaussian kernel. We show that our approach can be extended to develop Gaussian kernels on any embedded manifold. Furthermore, kernel ridge regression classifier (KRRC) is implemented to address the shape classification problem on _2^k, and their promising performances are illustrated through the real data analysis.

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