Title :
LGE-KSVD: Robust Sparse Representation Classification
Author :
Ptucha, Raymond ; Savakis, Andreas E.
Author_Institution :
Dept. of Comput. Eng., Rochester Inst. of Technol., Rochester, NY, USA
Abstract :
The parsimonious nature of sparse representations has been successfully exploited for the development of highly accurate classifiers for various scientific applications. Despite the successes of Sparse Representation techniques, a large number of dictionary atoms as well as the high dimensionality of the data can make these classifiers computationally demanding. Furthermore, sparse classifiers are subject to the adverse effects of a phenomenon known as coefficient contamination, where, for example, variations in pose may affect identity and expression recognition. We analyze the interaction between dimensionality reduction and sparse representations, and propose a technique, called Linear extension of Graph Embedding K-means-based Singular Value Decomposition (LGE-KSVD) to address both issues of computational intensity and coefficient contamination. In particular, the LGE-KSVD utilizes variants of the LGE to optimize the K-SVD, an iterative technique for small yet over complete dictionary learning. The dimensionality reduction matrix, sparse representation dictionary, sparse coefficients, and sparsity-based classifier are jointly learned through the LGE-KSVD. The atom optimization process is redefined to allow variable support using graph embedding techniques and produce a more flexible and elegant dictionary learning algorithm. Results are presented on a wide variety of facial and activity recognition problems that demonstrate the robustness of the proposed method.
Keywords :
dictionaries; image representation; iterative methods; optimisation; singular value decomposition; LGE-KSVD; activity recognition problems; atom optimization process; coefficient contamination; computational intensity; dictionary learning algorithm; dimensionality reduction matrix; expression recognition; facial recognition problems; graph embedding techniques; iterative technique; linear extension of graph embedding k-means-based singular value decomposition; robust sparse representation classification; sparse coefficients; sparse representation dictionary; sparsity-based classifier; Contamination; Dictionaries; Image reconstruction; Manifolds; Principal component analysis; Sparse matrices; Training; Dimensionality reduction; activity recognition; facial analysis; manifold learning; sparse representation;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2014.2303648