Face recognition via adaptive sparse representations of random patches

D. Mery, K. Bowyer
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引用次数: 16

Abstract

Unconstrained face recognition is still an open problem, as state-of-the-art algorithms have not yet reached high recognition performance in real-world environments (e.g., crowd scenes at the Boston Marathon). This paper addresses this problem by proposing a new approach called Adaptive Sparse Representation of Random Patches (ASR+). In the learning stage, for each enrolled subject, a number of random patches are extracted from the subject's gallery images in order to construct representative dictionaries. In the testing stage, random test patches of the query image are extracted, and for each test patch a dictionary is built concatenating the `best' representative dictionary of each subject. Using this adapted dictionary, each test patch is classified following the Sparse Representation Classification (SRC) methodology. Finally, the query image is classified by patch voting. Thus, our approach is able to deal with a larger degree of variability in ambient lighting, pose, expression, occlusion, face size and distance from the camera. Experiments were carried out on five widely-used face databases. Results show that ASR+ deals well with unconstrained conditions, outperforming various representative methods in the literature in many complex scenarios.
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基于随机斑块自适应稀疏表示的人脸识别
无约束人脸识别仍然是一个开放的问题,因为最先进的算法尚未在现实环境中达到高识别性能(例如,波士顿马拉松比赛的人群场景)。为了解决这个问题,本文提出了一种新的方法,称为随机斑块的自适应稀疏表示(ASR+)。在学习阶段,对于每个注册的主题,从主题的图库图像中随机提取一些补丁,以构建具有代表性的字典。在测试阶段,提取查询图像的随机测试补丁,并为每个测试补丁构建字典,并将每个主题的“最佳”代表性字典连接起来。使用这个改编的字典,每个测试补丁按照稀疏表示分类(SRC)方法进行分类。最后,对查询图像进行补丁投票分类。因此,我们的方法能够处理环境光线、姿势、表情、遮挡、面部大小和距离相机的距离等更大程度的变化。实验在5个广泛使用的人脸数据库上进行。结果表明,ASR+能很好地处理无约束条件,在许多复杂场景下优于文献中各种代表性方法。
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