Title :
2D sparse dictionary learning via tensor decomposition
Author :
Sung-Hsien Hsieh ; Chun-Shien Lu ; Soo-Chang Pei
Author_Institution :
Inst. of Inf. Sci., NTU, Taipei, Taiwan
Abstract :
The existing dictionary learning methods mostly focus on ID signals, leading to the disadvantage of incurring overload of memory and computation if the size of training samples is large enough. Recently, 2D dictionary learning paradigm has been validated to save massive memory usage, especially for large-scale problems. To address this issue, we propose novel 2D dictionary learning algorithms based on tensors in this paper. Our learning problem is efficiently solved by CANDECOMP/PARAFAC (CP) decomposition. In addition, our algorithms guarantee sparsity constraint, which makes that sparse representation of the learned dictionary is equivalent to the ground truth. Experimental results confirm the effectness of our methods.
Keywords :
signal representation; singular value decomposition; tensors; 2D matrices; 2D sparse dictionary learning; CANDECOMP/PARAFAC decomposition; CP decomposition; singular value decomposition; sparse representation; sparsity constraint; tensor decomposition; Big data; Dictionaries; Information processing; Matrix decomposition; Sparse matrices; Tensile stress; Training; CANDECOMP/PARAFAC (CP) decomposition; Dictionary learning; Sparse representation; Tensor;
Conference_Titel :
Signal and Information Processing (GlobalSIP), 2014 IEEE Global Conference on
Conference_Location :
Atlanta, GA
DOI :
10.1109/GlobalSIP.2014.7032166