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Recognizing Partially Occluded Faces from a Single Exemplar Image Per Person

机译:从每个人的单个示例图像识别部分闭塞面

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Despite remarkable progress on human face recognition, little attention has been given to robustly recognizing partially occluded faces. In this paper, we propose a new approach to recognize partially occluded faces when only one exemplar image per person is available. In this approach, a face image is represented as an array of Patch PCA (PPCA) extracted from a partitioned face image containing information of local regions instead of holistic information of a face. An adaptive weighting technique is utilized to assign proper weights to PPCA features to adjust the contribution of each local region of a face in terms of the richness of identity information and the likelihood of occlusion in a local region. The encouraging experimental results using AR face database demonstrate that the proposed method provides a new solution to the problem of robustly recognizing partially occluded faces in single model databases.
机译:尽管对人类脸部识别取得了显着进展,但对稳健识别部分封闭的面孔感到很少。在本文中,我们提出了一种新方法,以识别每人每个人的一个示例图像时识别部分闭塞面。在这种方法中,面部图像被表示为从包含局部区域的信息的分隔面图像提取的贴片PCA(PPCA)阵列,而不是面部的整体信息。利用自适应加权技术将适当的权重分配给PPCA特征,以在身份信息的丰富性和局部区域中的闭塞的可能性方面调整每个局部区域的贡献。使用AR面部数据库的令人鼓舞的实验结果表明,所提出的方法为在单一模型数据库中稳健地识别部分封闭面的问题提供了新的解决方案。

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