Latent Dictionary Learning for Sparse Representation based Classification
Meng Yang, Dengxin Dai, Lilin Shen, Luc Van Gool; Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2014, pp. 4138-4145
Abstract
Dictionary  learning (DL) for  sparse  coding  has  shown promising  results  in classification  tasks, while how  to  adaptively build the relationship between dictionary atoms  and  class  labels  is  still  an  important open question. The existing  dictionary  learning  approaches simply fix  a dictionary atom to be either class-specific or shared by all classes beforehand, ignoring that the relationship needs to be updated during DL. To address this issue, in this paper we  propose  a  novel latent  dictionary  learning  (LDL) method  to learn a  discriminative  dictionary and  build  its relationship to  class  labels  adaptively.  Each  dictionary atom  is  jointly  learned  with  a  latent  vector,  which associates  this  atom  to the  representation  of  different classes.  More  specifically,  we introduce  a  latent representation  model,  in  which  discrimination  of  the learned  dictionary  is  exploited  via  minimizing  the  within-class  scatter  of  coding  coefficients  and  the  latent-value  weighted  dictionary  coherence. The  optimal  solution  is  efficiently  obtained  by  the  proposed  solving algorithm. Correspondingly, a latent sparse representation based  classifier  is  also  presented.  Experimental  results demonstrate that our algorithm outperforms many recently proposed  sparse representation  and dictionary learning approaches for action, gender and face recognition.
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bibtex]
@InProceedings{Yang_2014_CVPR,
author = {Yang, Meng and Dai, Dengxin and Shen, Lilin and Van Gool, Luc},
title = {Latent Dictionary Learning for Sparse Representation based Classification},
booktitle = {Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2014}
}