资源论文Scalable Sparse Subspace Clustering

Scalable Sparse Subspace Clustering

2019-11-28 | |  53 |   38 |   0

Abstract In this paper, we address two problems in Sparse Subspace Clustering algorithm (SSC), i.e., scalability issue and out-of-sample problem. SSC constructs a sparse similarity graph for spectral clustering by using 1-minimization based coeffificients, has achieved state-of-the-art results for image clustering and motion segmentation. However, the time complexity of SSC is proportion to the cubic of problem size such that it is ineffificient to apply SSC into large scale setting. Moreover, SSC does not handle with out-ofsample data that are not used to construct the similarity graph. For each new datum, SSC needs recalculating the cluster membership of the whole data set, which makes SSC is not competitive in fast online clustering. To address the problems, this paper proposes out-of-sample extension of SSC, named as Scalable Sparse Subspace Clustering (SSSC), which makes SSC feasible to cluster large scale data sets. The solution of SSSC adopts a ”sampling, clustering, coding, and classifying” strategy. Extensive experimental results on several popular data sets demonstrate the effectiveness and effificiency of our method comparing with the state-of-the-art algorithms.

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