Title :
Subspace clustering with dense representations
Author :
Dyer, Eva L. ; Studer, Christoph ; Baraniuk, R.G.
Author_Institution :
ECE Dept., Rice Univ., Houston, TX, USA
Abstract :
Unions of subspaces have recently been shown to provide a compact nonlinear signal model for collections of high-dimensional data, such as large collections of images or videos. In this paper, we introduce a novel data-driven algorithm for learning unions of subspaces directly from a collection of data; our approach is based upon forming minimum ℓ2-norm (least-squares) representations of a signal with respect to other signals in the collection. The resulting representations are then used as feature vectors to cluster the data in accordance with each signal´s subspace membership. We demonstrate that the proposed least-squares approach leads to improved classification performance when compared to state-of-the-art subspace clustering methods on both synthetic and real-world experiments. This study provides evidence that using least-squares methods to form data-driven representations of collections of data provide significant advantages over current methods that rely upon sparse representations.
Keywords :
least squares approximations; pattern clustering; signal classification; signal representation; classification performance; compact nonlinear signal model; data collection; data-driven representation algorithm; least-square representation; minimum ℓ2-norm representation; sparse dense representation; subspace data clustering method; subspace learning union; Clustering algorithms; Laplace equations; Lighting; Signal to noise ratio; Sparse matrices; Vectors; Subspace clustering; least-squares methods; sparse recovery methods; sparsity; unions of subspaces;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location :
Vancouver, BC
DOI :
10.1109/ICASSP.2013.6638260