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Low-resolution and open-set face recognition via recursive label propagation based on statistical classification

机译:基于统计分类,通过递归标签传播的低分辨率和开放式面部识别

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摘要

In video surveillance, the captured face images are usually suffered from low-resolution (LR), besides, not all the probe images have mates in the gallery under the premise that only a single frontal high-resolution (HR) face image per subject. To address this problem, a novel face recognition framework called recursive label propagation based on statistical classification (ReLPBSC) has been proposed in this paper. Firstly, we employ VGG to extract robust discriminative feature vectors to represent each face. Then we select the corresponding LR face in the probe for each HR gallery face by similarity. Based on the picked HR-LR pairs, ReLPBSC is implemented for recognition. The main contributions of the proposed approach are as follows: (i) Inspired by substantial achievements of deep learning methods, VGG is adopted to achieve discriminative representation for LR faces to avoid the super-resolution steps; (ii) the accepted and rejected threshold parameters, which are not fixed in face recognition, can be achieved with ReLPBSC adaptively; (iii) the unreliable subjects never enrolled in the gallery can be rejected automatically with designed methods. Experimental results in 16 x 16 pixels resolution show that the proposed method can achieve 86.64% recall rate while keeping 100% precision.
机译:在视频监控中,捕获的面部图像通常遭受低分辨率(LR),除此之外,并非所有探针图像都在图中的前提下面只有每个受试者的单个前高分辨率(HR)面部图像。为了解决这个问题,本文提出了一种基于统计分类(Relpbsc)的递归标签传播的新型面部识别框架。首先,我们使用VGG来提取鲁棒的鉴别特征向量来表示每张面部。然后我们通过相似性为每个HR库面对探头中的相应LR面部。基于拣选的HR-LR对,实现RelpBSC以识别。拟议方法的主要贡献如下:(i)通过大量成果的深度学习方法的启发,通过vgg来实现LR面临的歧视代表,以避免超级分辨率步骤; (ii)可以自适应地通过Relpbsc实现不固定的接受和拒绝的阈值参数; (iii)可以使用设计方法自动拒绝从未注册画廊的不可靠性科目。在16×16像素分辨率中的实验结果表明,该方法可以达到86.64%的召回率,同时保持100%精度。

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