Feb. 6, 2024, 5:42 a.m. | Huy Tran Yikun Bai Abihith Kothapalli Ashkan Shahbazi Xinran Liu Rocio Diaz Martin Soheil Kolouri

cs.LG updates on arXiv.org arxiv.org

Comparing spherical probability distributions is of great interest in various fields, including geology, medical domains, computer vision, and deep representation learning. The utility of optimal transport-based distances, such as the Wasserstein distance, for comparing probability measures has spurred active research in developing computationally efficient variations of these distances for spherical probability measures. This paper introduces a high-speed and highly parallelizable distance for comparing spherical measures using the stereographic projection and the generalized Radon transform, which we refer to as the …

computer computer vision cs.ai cs.cv cs.lg domains fields geology medical paper probability representation representation learning research stat.ml transport utility vision

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