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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Discriminative multi-scale sparse coding for single-sample face recognition with occlusion
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Discriminative multi-scale sparse coding for single-sample face recognition with occlusion

机译:单样本面部识别的辨别多尺度稀疏编码与闭塞

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摘要

The single sample per person (SSPP) face recognition is a major problem and it is also an important challenge for practical face recognition systems due to the lack of sample data information. To solve SSPP problem, some existing methods have been proposed to overcome the effect of variances to test samples in illumination, expression and pose. However, they are not robust when the test samples are with different kinds of occlusions. In this paper, we propose a discriminative multi-scale sparse coding (DMSC) model to address this problem. We model the possible occlusion variations via the learned dictionary from the subjects not of interest. Together with the single training sample per person, most of types of occlusion variations can be effectively tackled. In order to detect and disregard outlier pixels due to occlusion, we develop a multi-scale error measurements strategy, which produces sparse, robust and highly discriminative coding. Extensive experiments on the benchmark databases show that our DMSC is more robust and has higher breakdown point in dealing with the SSPP problem for face recognition with occlusion as compared to the related state-of-the-art methods.
机译:由于缺乏样本数据信息,单样本人脸识别是一个主要问题,也是实际人脸识别系统面临的一个重要挑战。为了解决SSPP问题,已经提出了一些现有的方法来克服方差对测试样本在光照、表情和姿势方面的影响。然而,当测试样本具有不同类型的遮挡时,它们并不稳健。在本文中,我们提出了一个判别多尺度稀疏编码(DMSC)模型来解决这个问题。我们通过学习词典对不感兴趣的主题进行可能的遮挡变化建模。再加上每个人的单一训练样本,大多数类型的遮挡变化都可以有效解决。为了检测和忽略由于遮挡而产生的异常像素,我们开发了一种多尺度误差测量策略,该策略产生稀疏、鲁棒和高度区分的编码。在基准数据库上的大量实验表明,与相关的最新方法相比,我们的DMSC在处理带有遮挡的人脸识别的SSPP问题时具有更高的鲁棒性和崩溃点。

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