Discriminative collaborative representation for multimodal image classification:
[摘要] Sparse representation has been widely researched for image-based classification. However, sparse representation classification directly treats training samples as a dictionary, so it needs a large training set and is time consuming, especially for a large training set. To derive a small dictionary, many dictionary learning algorithms are researched. Thus, object recognition problem is transformed to optimize the sparse representation errors on the compact dictionary. The sparse representation optimization is constraint by l0-norm, which is NP-hard problem. Though we can use l1-norm minimization instead to work effectively, it is still time consuming for optimization. To make the algorithm discriminative and simultaneously decrease the computational burden, we proposed a fast discriminative collaborative representationâbased classification algorithm. The new algorithm incorporated the within-class scatter and the linear classification error terms into the objective function to derive a more discriminative dictionary and simultaneously added collaborative representation mechanism to cut off the time consuming. At the end of this article, we designed two experiments to validate our method using near-infrared and AR visible databases for multimodal face recognition. The results showed that our algorithm outperformance sparse representationâbased, collaborative representationâbased, and discriminative-KSVD classification algorithms.
[发布日期] [发布机构]
[效力级别] [学科分类] 自动化工程
[关键词] Object recognition;classification;collaborative representation;sparse representation;sparse coding;multimodal image [时效性]