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Robust face recognition via discriminative and common hybrid dictionary learning

机译:通过鉴别和常见的混合词典学习强大的人脸识别

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摘要

Dictionary learning has recently attracted a great deal of attention due to its efficacy in sparse representation based image classification task. There are two main limitations of the Sparse Representation based Classification (SRC) for applications. One is that the training data is required to be less corrupted, and the other is that each class should have sufficient training samples. To overcome these two critical issues, we propose a novel approach, namely Discriminative and Common hybrid Dictionary Learning (DCDL), for solving robust face recognition. With the priori target rank information, the DCDL is able to recover a clean discriminative dictionary by exploiting underlying low-rank structure of training data. Simultaneously, the common intra-class variation dictionary is learned to make sure that a query image can be better represented by the collaboration with image variations of other classes. Extensive experiments on representative face databases show that the proposed approach outperforms the state-of-the-art sparse representation based algorithms in dealing with non-occluded face recognition, and yields significant performance improvements in most cases of occluded face recognition.
机译:由于其基于稀疏表示的图像分类任务的功效,字典学习最近引起了大量的注意。基于稀疏表示的分类(SRC)对于应用程序存在两个主要限制。一个是,培训数据需要不那么损坏,另一类应该有足够的训练样本。为了克服这两个关键问题,我们提出了一种新的方法,即判别和常见的混合词典学习(DCDL),用于解决稳健的人脸识别。利用先验目标等级信息,DCDL能够通过利用培训数据的低级结构来恢复清洁的鉴别性词典。同时,学习公共帧内变化词典以确保通过与其他类的图像变体的协作可以更好地表示查询图像。关于代表性面部数据库的广泛实验表明,所提出的方法优于基于最先进的稀疏表示的算法,以处理非闭塞面部识别,在大多数封闭面部识别的情况下产生显着的性能改进。

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