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Dynamic Feature Learning for Partial Face Recognition

机译:动态特征学习用于部分人脸识别

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Partial face recognition (PFR) in unconstrained environment is a very important task, especially in video surveillance, mobile devices, etc. However, a few studies have tackled how to recognize an arbitrary patch of a face image. This study combines Fully Convolutional Network (FCN) with Sparse Representation Classification (SRC) to propose a novel partial face recognition approach, called Dynamic Feature Matching (DFM), to address partial face images regardless of size. Based on DFM, we propose a sliding loss to optimize FCN by reducing the intra-variation between a face patch and face images of a subject, which further improves the performance of DFM. The proposed DFM is evaluated on several partial face databases, including LFW, YTF and CASIA-NIR-Distance databases. Experimental results demonstrate the effectiveness and advantages of DFM in comparison with state-of-the-art PFR methods.
机译:在不受限制的环境中,部分面部识别(PFR)是一项非常重要的任务,尤其是在视频监控,移动设备等中。然而,一些研究已经着手解决如何识别面部图像的任意补丁。这项研究将完全卷积网络(FCN)与稀疏表示分类(SRC)结合起来,提出了一种新颖的局部人脸识别方法,称为动态特征匹配(DFM),以解决局部人脸图像的大小问题。基于DFM,我们提出了一种滑动损失,可通过减少对象的面部补丁和面部图像之间的内部变化来优化FCN,从而进一步改善DFM的性能。拟议的DFM在包括LFW,YTF和CASIA-NIR-Distance数据库在内的几个局部人脸数据库上进行了评估。实验结果证明了DFM与最新的PFR方法相比的有效性和优势。

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