Title :
New sparse subspace learning approaches for feature abstraction and recognition
Author :
Qi Zhang ; Tianguang Chu
Author_Institution :
Authors are with State Key Lab. for Turbulence & Complex Syst., Peking Univ., Beijing, China
Abstract :
In this paper, we propose two novel sparse representation based dimension reduction approaches for feature abstraction and recognition: sparse local preserving projection (SLPP) and structural sparse local preserving projection (SSLPP). They are efficient in detecting the nonlinear features of the intrinsic manifold structure, also improving the interpretability of the projection. In addition, SSLPP promotes a more organized structural sparse pattern, overcoming the problem that just decreasing the cardinality may not be enough in some situations. Experiments in data classification and face recognition are carried out to verify the validity and effectiveness of the proposed methods.
Keywords :
face recognition; feature extraction; learning (artificial intelligence); sparse matrices; SSLPP; cardinality; data classification; face recognition; feature abstraction; feature recognition; intrinsic manifold structure; organized structural sparse pattern; sparse representation based dimension reduction; sparse subspace learning; structural sparse local preserving projection; Databases; Face recognition; Manifolds; Optimization; Principal component analysis; Training; Vectors; data classification; dimension reduction; face recognition; feature abstraction; sparse representation; structural sparsity;
Conference_Titel :
Control Conference (CCC), 2014 33rd Chinese
Conference_Location :
Nanjing
DOI :
10.1109/ChiCC.2014.6895779