Robust Semi Supervised Subspace Clustering via Non Negative Low Rank Representat

super_dasuda 25 0 PDF 2021-04-21 07:04:00

Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of data. However, in previous LRR-based semi-supervised subspace clustering methods, the label information is not used to guide the affinity matrix construction so that the affinity matrix cannot deliver strong discriminant information. Moreover, these methods cannot guarantee an overall optimum since the affinity matrix construction and subspace clustering are often independent steps. In this paper,

Robust Semi Supervised Subspace Clustering via Non Negative Low Rank Representat

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