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Multi-Pose Face Recognition Based on Deep Learning in Unconstrained Scene

机译:基于无束场景深度学习的多姿态识别

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At present, deep learning drives the rapid development of face recognition. However, in the unconstrained scenario, the change of facial posture has a great impact on face recognition. Moreover, the current model still has some shortcomings in accuracy and robustness. The existing research has formulated two methods to solve the above problems. One method is to model and train each pose separately. Then, a fusion decision will be made. The other method is to make “frontal” faces on the image or feature level and transform them into “frontal” face recognition. Based on the second idea, we propose a profile to the frontal revise mapping (PTFRM) module. This module realizes the revision of arbitrary poses on the feature level and transforms the multi-pose features into an approximate frontal representation to enhance the recognition ability of the existing recognition models. Finally, we evaluate the PTFRM on unconstrained face validation benchmark datasets such as Labeled Faces in the Wild (LFW), Celebrities in Frontal Profile (CFP), and IARPA Janus Benchmark A(IJB-A). Results show that the chosen method for this study achieves good performance.
机译:目前,深度学习推动了人脸识别的快速发展。然而,在不受约束的情景中,面部姿势的变化对人脸识别产生了很大影响。此外,目前的模型仍然具有一些准确性和稳健性的缺点。现有的研究制定了解决上述问题的两种方法。一种方法是为每个姿势进行建模和培训。然后,将进行融合决定。另一种方法是在图像或特征级别上制作“正面”面,并将其转换为“正面”面部识别。基于第二个想法,我们向正面修改映射(PTFRM)模块提出了一种配置文件。该模块实现了特征级别的任意姿势的修订,并将多姿态特征转换为近似的正面表示,以增强现有识别模型的识别能力。最后,我们在野外(LFW)中标记的面孔,正面轮廓(CFP)中的名人和IARPA Janus基准A(IJB-A)中标记面的PTFRM等PTFRM。结果表明,本研究所选择的方法实现了良好的性能。

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