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Subspace Clustering via Optimal Direction Search | IEEE Journals & Magazine | IEEE Xplore

Subspace Clustering via Optimal Direction Search


Abstract:

This letter presents a new spectral-clustering-based approach to the subspace clustering problem. Underpinning the proposed method is a convex program for optimal directi...Show More

Abstract:

This letter presents a new spectral-clustering-based approach to the subspace clustering problem. Underpinning the proposed method is a convex program for optimal direction search, which for each data point d finds an optimal direction in the span of the data that has minimum projection on the other data points and nonvanishing projection on d. The obtained directions are subsequently leveraged to identify a neighborhood set for each data point. An alternating direction method of multipliers framework is provided to efficiently solve for the optimal directions. The proposed method is shown to often outperform the existing subspace clustering methods, particularly for unwieldy scenarios involving high levels of noise and close subspaces, and yields the state-ofthe-art results for the problem of face clustering using subspace segmentation.
Published in: IEEE Signal Processing Letters ( Volume: 24, Issue: 12, December 2017)
Page(s): 1793 - 1797
Date of Publication: 28 September 2017

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