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Dynamic Feature Learning for Partial Face Recognition

机译:部分面部识别的动态特征学习

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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:不受约束环境中的部分人脸识别(PFR)是一个非常重要的任务,特别是在视频监控,移动设备等中,但是,一些研究解决了如何识别面部图像的任意斑块。本研究将全卷积网络(FCN)与稀疏表示分类(SRC)结合起来提出一种新的部分面部识别方法,称为动态特征匹配(DFM),以解决部分面部图像而无论大小如何。基于DFM,我们提出了一种滑动损耗来通过减少对象的面部贴片和面部图像之间的帧内变化来优化FCN,这进一步提高了DFM的性能。所提出的DFM在几个部分面部数据库上进行评估,包括LFW,YTF和Casia-Nir距离数据库。实验结果表明,与最先进的PFR方法相比,DFM的有效性和优点。

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