Sparse subspace clustering
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Abstract
We propose a method based on sparse representation (SR) to cluster data drawn from multiple low-dimensional linear or affine subspaces embedded in a high-dimensional space. Our method is based on the fact that each point in a union of subspaces has a SR with respect to a dictionary formed by all other data points. In general, finding such a SR is NP hard. Our key contribution is to show that, under mild assumptions, the SR can be obtained `exactly' by using l 1 optimization. The segmentation of the data is obtained by applying spectral clustering to a similarity matrix built from this SR. Our method can handle noise, outliers as well as missing data. We apply our subspace clustering algorithm to the problem of…
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2Topics & keywords
Topics
Keywords
- Linear subspace
- Spectral clustering
- Cluster analysis
- Outlier
- Computer science
- Pattern recognition (psychology)
- Data point
- Similarity (geometry)
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