Fisher Discrimination Dictionary Learning for sparse representation

Meng Yang, Lei Zhang, Xiangchu Feng, D. Zhang
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引用次数: 972

Abstract

Sparse representation based classification has led to interesting image recognition results, while the dictionary used for sparse coding plays a key role in it. This paper presents a novel dictionary learning (DL) method to improve the pattern classification performance. Based on the Fisher discrimination criterion, a structured dictionary, whose dictionary atoms have correspondence to the class labels, is learned so that the reconstruction error after sparse coding can be used for pattern classification. Meanwhile, the Fisher discrimination criterion is imposed on the coding coefficients so that they have small within-class scatter but big between-class scatter. A new classification scheme associated with the proposed Fisher discrimination DL (FDDL) method is then presented by using both the discriminative information in the reconstruction error and sparse coding coefficients. The proposed FDDL is extensively evaluated on benchmark image databases in comparison with existing sparse representation and DL based classification methods.
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稀疏表示的Fisher判别字典学习
基于稀疏表示的分类导致了有趣的图像识别结果,而用于稀疏编码的字典在其中起着关键作用。本文提出了一种新的字典学习方法来提高模式分类性能。基于Fisher判别准则,学习到一个字典原子与类标签对应的结构化字典,利用稀疏编码后的重构误差进行模式分类。同时,对编码系数施加Fisher判别准则,使编码系数类内散点小,类间散点大。然后利用重构误差中的判别信息和稀疏编码系数,提出了一种与Fisher判别DL (FDDL)方法相关联的分类方案。与现有的稀疏表示和基于深度学习的分类方法相比,本文提出的FDDL在基准图像数据库上进行了广泛的评估。
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