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Discriminative Weighted Non-negative Sparse Low-rank Representation Classifier for Robust Face Recognition

机译:鉴别加权非负稀疏低秩表示分类器,用于鲁棒人脸识别

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Aiming at the traditional face recognition method, when the training samples and test samples are in complex application scenarios, the face recognition performance is degraded by the interference factors such as light changes, pollution and occlusion. This paper proposes a robust face recognition based on discriminative weighted non-negative sparse low-rank representation classification algorithm (WDNSLRRC). Based on the non-negative sparse low rank representation classification algorithm (NSLRRC), structural inconsistency constraints and singular values with different weights are assigned by adaptive weighted kernel norms. Different classes of samples may have the same features, and structural inconsistencies may inhibit these same features while retaining independent features. Weighted kernel norm (WNNM) is a low rank algorithm for constrained matrix singular value sparsity. The superiority of the algorithm in face recognition performance is proved in different face databases.
机译:针对传统的人脸识别方法,当训练样本和测试样本在复杂的应用场景中时,人脸识别性能会受到光线变化,污染和遮挡等干扰因素的影响而降低。本文提出了一种基于判别加权非负稀疏低秩表示分类算法(WDNSLRRC)的鲁棒人脸识别算法。基于非负稀疏低秩表示分类算法(NSLRRC),通过自适应加权核范数分配结构不一致约束和具有不同权重的奇异值。不同类别的样本可能具有相同的特征,并且结构不一致可能会抑制这些相同的特征,同时保留独立的特征。加权核范数(WNNM)是用于约束矩阵奇异值稀疏性的低秩算法。在不同的人脸数据库中证明了该算法在人脸识别性能上的优越性。

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