CVMar 8, 2014

Quality-based Multimodal Classification Using Tree-Structured Sparsity

arXiv:1403.1902v121 citations
Originality Incremental advance
AI Analysis

This work addresses multimodal classification challenges by enhancing sparsity-based fusion methods, offering incremental improvements for tasks such as face recognition.

The paper tackles the problem of multimodal classification by reformulating tree-structured sparsity to improve group-level sparsity and introducing a quality-based weighting scheme for modalities, achieving robust performance in applications like face and target recognition.

Recent studies have demonstrated advantages of information fusion based on sparsity models for multimodal classification. Among several sparsity models, tree-structured sparsity provides a flexible framework for extraction of cross-correlated information from different sources and for enforcing group sparsity at multiple granularities. However, the existing algorithm only solves an approximated version of the cost functional and the resulting solution is not necessarily sparse at group levels. This paper reformulates the tree-structured sparse model for multimodal classification task. An accelerated proximal algorithm is proposed to solve the optimization problem, which is an efficient tool for feature-level fusion among either homogeneous or heterogeneous sources of information. In addition, a (fuzzy-set-theoretic) possibilistic scheme is proposed to weight the available modalities, based on their respective reliability, in a joint optimization problem for finding the sparsity codes. This approach provides a general framework for quality-based fusion that offers added robustness to several sparsity-based multimodal classification algorithms. To demonstrate their efficacy, the proposed methods are evaluated on three different applications - multiview face recognition, multimodal face recognition, and target classification.

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