Does Generative Face Completion Help Face Recognition?

Joe Mathai, I. Masi, Wael AbdAlmageed
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引用次数: 25

Abstract

Face occlusions, covering either the majority or discriminative parts of the face, can break facial perception and produce a drastic loss of information. Biometric systems such as recent deep face recognition models are not immune to obstructions or other objects covering parts of the face. While most of the current face recognition methods are not optimized to handle occlusions, there have been a few attempts to improve robustness directly in the training stage. Unlike those, we propose to study the effect of generative face completion on the recognition. We offer a face completion encoder-decoder, based on a convolutional operator with a gating mechanism, trained with an ample set of face occlusions. To systematically evaluate the impact of realistic occlusions on recognition, we propose to play the occlusion game: we render 3D objects onto different face parts, providing precious knowledge of what the impact is of effectively removing those occlusions. Extensive experiments on the Labeled Faces in the Wild (LFW), and its more difficult variant LFW-BLUFR, testify that face completion is able to partially restore face perception in machine vision systems for improved recognition.
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生成人脸补全是否有助于人脸识别?
面部遮挡,无论是覆盖了脸部的大部分还是有区别的部分,都会破坏面部感知并造成严重的信息丢失。生物识别系统,如最近的深度人脸识别模型,不能对遮挡面部部分的障碍物或其他物体免疫。虽然目前大多数人脸识别方法都没有针对遮挡进行优化,但已经有一些尝试直接在训练阶段提高鲁棒性。与此不同,我们建议研究生成式人脸补全对识别的影响。我们提供了一个基于带有门控机制的卷积算子的人脸补全编码器,并使用大量的人脸遮挡进行了训练。为了系统地评估真实遮挡对识别的影响,我们建议玩遮挡游戏:我们将3D物体渲染到不同的面部部位,提供有效去除这些遮挡的影响的宝贵知识。在野外标记面部(LFW)及其更困难的变体LFW- blufr上进行的大量实验证明,面部补全能够部分恢复机器视觉系统中的面部感知,以提高识别能力。
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