Sparse Coding with Fast Image Alignment Via Large Displacement Optical Flow

Nasser Nasrabadi1, Trac Tran2, Xiaoxia Sun3

  • 1WVU
  • 2Johns Hopkins University
  • 3The Johns Hopkins University

Details

13:30 - 15:30 | Tue 22 Mar | Poster Area E | MLSP-P1.8

Session: Classification and Pattern Recognition I

Abstract

Sparse representation-based classifiers have shown outstanding accuracy and robustness in image classification tasks even with the presence of intense noise and occlusion. However, it has been discovered that the performance degrades significantly either when the test image is not aligned with the dictionary atoms or the dictionary atoms themselves are not aligned with each other. In this paper, having both training and test images misaligned, we introduce a novel sparse coding framework that is able to efficiently adapt the dictionary atoms to the test image via large displacement optical flow. In the proposed algorithm, every dictionary atom is aligned with the input image and the sparse code is then recovered using the adapted dictionary atoms. A corresponding supervised dictionary learning algorithm is also developed for the proposed framework. Experimental results on digit datasets recognition verify the efficacy and robustness of the proposed algorithm.