4.8 Article

Subspace Clustering by Block Diagonal Representation

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2018.2794348

关键词

Subspace clustering; spectral clustering; block diagonal regularizer; block diagonal representation; nonconvex optimization; convergence analysis

资金

  1. National University of Singapore [R-263-000-C08-133]
  2. Ministry of Education of Singapore [R-263-000-C21-112]
  3. National Basic Research Program of China (973 Program) [2015CB352502]
  4. National Natural Science Foundation (NSF) of China [61625301, 61731018]
  5. Qualcomm
  6. Microsoft Research Asia

向作者/读者索取更多资源

This paper studies the subspace clustering problem. Given some data points approximately drawn from a union of subspaces, the goal is to group these data points into their underlying subspaces. Many subspace clustering methods have been proposed and among which sparse subspace clustering and low-rank representation are two representative ones. Despite the different motivations, we observe that many existing methods own the common block diagonal property, which possibly leads to correct clustering, yet with their proofs given case by case. In this work, we consider a general formulation and provide a unified theoretical guarantee of the block diagonal property. The block diagonal property of many existing methods falls into our special case. Second, we observe that many existing methods approximate the block diagonal representation matrix by using different structure priors, e.g., sparsity and low-rankness, which are indirect. We propose the first block diagonal matrix induced regularizer for directly pursuing the block diagonal matrix. With this regularizer, we solve the subspace clustering problem by Block Diagonal Representation (BDR), which uses the block diagonal structure prior. The BDR model is nonconvex and we propose an alternating minimization solver and prove its convergence. Experiments on real datasets demonstrate the effectiveness of BDR.

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