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Face recognition using class specific dictionary learning for sparse representation and collaborative representation

机译:使用类特定的字典学习进行人脸识别,以实现稀疏表示和协作表示

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Recently, sparse representation based classification (SRC) and collaborative representation based classification (CRC) have been successfully used for visual recognition and have demonstrated impressive performance. Given a test sample, SRC or CRC formulates its linear representation with respect to the training samples and then computes the residual error for each. class. SRC or CRC assumes that the training samples from each class contribute equally to the dictionary in the corresponding class, i.e., the dictionary consists of the training samples in that class. This, however, leads to high residual error and instability. To overcome this limitation, we propose a class specific dictionary learning algorithm. To be specific, by introducing the dual form of dictionary learning, an explicit relationship between the basis vectors and the original image features is represented, which also enhances the interpretability. SRC or CRC can be thus considered as a special case of the proposed algorithm. Blockwise coordinate descent algorithm and Lagrange multipliers are then adopted to optimize the corresponding objective function. Extensive experimental results on five benchmark face recognition datasets show that the proposed algorithm achieves superior performance compared with conventional classification algorithms. (C) 2016 Elsevier B.V. All rights reserved.
机译:近来,基于稀疏表示的分类(SRC)和基于协作表示的分类(CRC)已成功用于视觉识别,并显示出令人印象深刻的性能。给定一个测试样本,SRC或CRC就训练样本制定其线性表示,然后为每个样本计算残留误差。类。 SRC或CRC假设来自每个类别的训练样本对相应类别中的字典做出同等贡献,即字典由该类别中的训练样本组成。但是,这导致较高的残留误差和不稳定性。为了克服此限制,我们提出了特定于类的字典学习算法。具体而言,通过引入字典学习的对偶形式,表示了基向量与原始图像特征之间的明确关系,这也增强了可解释性。因此,可以将SRC或CRC视为所提出算法的特殊情况。然后采用逐块坐标下降算法和拉格朗日乘数来优化相应的目标函数。在五个基准人脸识别数据集上的大量实验结果表明,与传统分类算法相比,该算法具有更高的性能。 (C)2016 Elsevier B.V.保留所有权利。

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