资源论文Small-Variance Nonparametric Clustering on the Hypersphere

Small-Variance Nonparametric Clustering on the Hypersphere

2019-12-18 | |  46 |   43 |   0

Abstract

Structural regularities in man-made environments reflflect in the distribution of their surface normals. Describing these surface normal distributions is important in many computer vision applications, such as scene understanding, plane segmentation, and regularization of 3D reconstructions. Based on the small-variance limit of Bayesian nonparametric von-Mises-Fisher (vMF) mixture distributions, we propose two new flflexible and effificient k-means-like clustering algorithms for directional data such as surface normals. The fifirst, DP-vMF-means, is a batch clustering algorithm derived from the Dirichlet process (DP) vMF mixture. Recognizing the sequential nature of data collection in many applications, we extend this algorithm to DDP-vMFmeans, which infers temporally evolving cluster structure from streaming data. Both algorithms naturally respect the geometry of directional data, which lies on the unit sphere. We demonstrate their performance on synthetic directional data and real 3D surface normals from RGB-D sensors. While our experiments focus on 3D data, both algorithms generalize to high dimensional directional data such as protein backbone confifigurations and semantic word vectors

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