资源论文Beyond Mahalanobis Metric: Cayley-Klein Metric Learning

Beyond Mahalanobis Metric: Cayley-Klein Metric Learning

2019-12-17 | |  119 |   47 |   0

Abstract

Cayley-Klein metric is a kind of non-Euclidean metric suitable for projective space. In this paper, we introduce it into the computer vision community as a powerful metric and an alternative to the widely studied Mahalanobis metric. We show that besides its good characteristic in nonEuclidean space, it is a generalization of Mahalanobis metric in some specifific cases. Furthermore, as many Mahalanobis metric learning, we give two kinds of Cayley-Klein metric learning methods: MMC Cayley-Klein metric learning and LMNN Cayley-Klein metric learning. Experiments have shown the superiority of Cayley-Klein metric over Mahalanobis ones and the effectiveness of our Cayley-Klein metric learning methods.

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