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Multi-feature Joint Dictionary Learning for Face Recognition

机译:人脸识别的多特征联合字典学习

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Dictionary learning with sparse representation has been widely used for pattern classification tasks, where an input is classified to the category with the minimum reconstruction error. While most methods focus on single-feature recognition problems, recent studies have proved the superiorities of exploiting multi-feature fusion classification. In this paper, we present a new multi-feature joint dictionary learning algorithm which can enhance correlations among different features via our designed class-level similarity regularization. The proposed algorithm can fuse different information and correlate these dictionary atoms within the same pattern category. Besides, the distinctiveness of several features is weighted differently to reflect their discriminative abilities. Furthermore, a dictionary learning algorithm is used to reduce dictionary size. The proposed algorithm achieves comparable experimental results in several face recognition databases.
机译:具有稀疏表示的字典学习已广泛用于模式分类任务,其中将输入分类到具有最小重构误差的类别。尽管大多数方法都集中在单一特征识别问题上,但最近的研究证明了利用多特征融合分类的优势。在本文中,我们提出了一种新的多特征联合字典学习算法,该算法可以通过我们设计的类级别相似性​​正则化来增强不同特征之间的相关性。所提出的算法可以融合不同的信息,并使这些字典原子在同一模式类别内相关。此外,对几个功能的独特性进行了加权,以反映其区分能力。此外,字典学习算法用于减小字典大小。该算法在多个人脸识别数据库中取得了可比的实验结果。

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