Improved image set classification via joint sparse approximated nearest subspaces


Autoria(s): Chen, Shaokang; Sanderson, Conrad; Harandi, Mehrtash T.; Lovell, Brian C.
Data(s)

01/06/2013

Resumo

Existing multi-model approaches for image set classification extract local models by clustering each image set individually only once, with fixed clusters used for matching with other image sets. However, this may result in the two closest clusters to represent different characteristics of an object, due to different undesirable environmental conditions (such as variations in illumination and pose). To address this problem, we propose to constrain the clustering of each query image set by forcing the clusters to have resemblance to the clusters in the gallery image sets. We first define a Frobenius norm distance between subspaces over Grassmann manifolds based on reconstruction error. We then extract local linear subspaces from a gallery image set via sparse representation. For each local linear subspace, we adaptively construct the corresponding closest subspace from the samples of a probe image set by joint sparse representation. We show that by minimising the sparse representation reconstruction error, we approach the nearest point on a Grassmann manifold. Experiments on Honda, ETH-80 and Cambridge-Gesture datasets show that the proposed method consistently outperforms several other recent techniques, such as Affine Hull based Image Set Distance (AHISD), Sparse Approximated Nearest Points (SANP) and Manifold Discriminant Analysis (MDA).

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/71705/

Publicador

The Institute of Electrical and Electronics Engineers, Inc.

Relação

http://eprints.qut.edu.au/71705/1/chen_image_set_classification_cvpr_2013.pdf

DOI:10.1109/CVPR.2013.65

Chen, Shaokang, Sanderson, Conrad, Harandi, Mehrtash T., & Lovell, Brian C. (2013) Improved image set classification via joint sparse approximated nearest subspaces. In CVPR 2013 : Proceedings 2013 IEEE Conference on Computer Vision, The Institute of Electrical and Electronics Engineers, Inc., Oregon Convention Centre, Portland, pp. 452-459.

Direitos

Copyright © 2013 by The Institute of Electrical and Electronics Engineers, Inc.

Fonte

Science & Engineering Faculty

Palavras-Chave #010200 APPLIED MATHEMATICS #080104 Computer Vision #080106 Image Processing #080109 Pattern Recognition and Data Mining #090609 Signal Processing
Tipo

Conference Paper