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Weighted average integration of sparse representation and collaborative representation for robust face recognition

机译:稀疏表示和协作表示的加权平均集成,可实现可靠的人脸识别

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Abstract Sparse representation is a significant method to perform image classification for face recognition. Sparsity of the image representation is the key factor for robust image classification. As an improvement to sparse representation-based classification, collaborative representation is a newer method for robust image classification. Training samples of all classes collaboratively contribute together to represent one single test sample. The ways of representing a test sample in sparse representation and collaborative representation are very different, so we propose a novel method to integrate both sparse and collaborative representations to provide improved results for robust face recognition. The method first computes a weighted average of the representation coefficients obtained from two conventional algorithms, and then uses it for classification. Experiments on several benchmark face databases show that our algorithm outperforms both sparse and collaborative representation-based classification algorithms, providing at least a 10% improvement in recognition accuracy.
机译:摘要稀疏表示是一种用于人脸识别的图像分类方法。图像表示的稀疏性是鲁棒图像分类的关键因素。作为对基于稀疏表示的分类的一种改进,协作表示是一种用于鲁棒图像分类的更新方法。所有类别的培训样本共同协作,代表一个测试样本。在稀疏表示和协作表示中表示测试样本的方式非常不同,因此我们提出了一种新颖的方法,将稀疏表示和协作表示集成在一起,以提供改进的结果,以增强人脸识别能力。该方法首先计算从两种常规算法获得的表示系数的加权平均值,然后将其用于分类。在多个基准人脸数据库上进行的实验表明,我们的算法优于基于稀疏算法和基于协作表示的分类算法,在识别准确率方面至少提高了10%。

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