OASG-Net:基于遮挡感知和结构引导的人脸去遮挡网络

Yuewei Fu;Buyun Liang;Zhongyuan Wang;Baojin Huang;Tao Lu;Chao Liang;Jing Liao
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引用次数: 0

摘要

在新冠肺炎疫情期间,几乎每个人都戴着口罩,这给人脸识别带来了巨大挑战。因此,提高被遮挡人脸的去遮挡性能是当务之急。然而,以前的绘制方法是有限的,因为它们需要给定遮罩的知识,并且在过去也缺乏适合人脸去遮挡任务的真实世界遮罩人脸数据集。为了解决上述问题,我们首创了一个具有准确掩码标签的真实世界掩码去遮挡数据集(RMFDD)。在此基础上,提出了一种基于遮挡感知和结构引导的人脸去遮挡网络(OASG-Net),该网络由掩码预测子网、结构预测子网和人脸去遮挡子网组成。特别是,由于掩码预测子网,OASG-Net在没有给定外部掩码的情况下实现了人脸去遮挡。我们还使用人脸结构来引导OASG-Net,使恢复的人脸拓扑更加自然和真实。此外,我们还设计了掩码感知层,以避免人脸去遮挡子网中部分卷积的硬0-1掩码更新。在人脸去遮挡和人脸识别任务上的广泛结果表明,我们的OASG-Net优于最先进的竞争对手。代码可从https://github.com/WHUfreeway/OASG-Net-Occlusion-Aware-and-Structure-Guided-Network-for-Face-De-Occlusion获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OASG-Net: Occlusion Aware and Structure-Guided Network for Face De-Occlusion
During the COVID-19 coronavirus epidemic, almost everyone wears a facial mask, which poses a huge challenge for face recognition. Therefore, it is urgent to improve the performance of face de-occlusion of masked faces. However, previous inpainting approaches are limited as they require the knowledge of a given mask, and in the past there was also a lack of real-world masked face datasets suitable for the face de-occlusion task. To tackle above issues, we pioneer a real-world masked face de-occlusion dataset (RMFDD) with accurate mask labels. Further, we propose an occlusion aware and structure-guided network (OASG-Net) for face de-occlusion, consisting of mask prediction subnet, structure prediction subnet, and face de-occlusion subnet. In particular, due to the mask prediction subnet, OASG-Net achieves face de-occlusion without a given external mask. We also use face structure to guide OASG-Net, which makes the recovered face topology more natural and realistic. Besides, we design the mask aware layer to avoid the hard 0-1 mask updating of partial convolution in the face de-occlusion subnet. Extensive results on both face de-occlusion and face recognition tasks demonstrate the superiority of our OASG-Net over the state-of-the-art competitors. Code is available at https://github.com/WHUfreeway/OASG-Net-Occlusion-Aware-and-Structure-Guided-Network-for-Face-De-Occlusion.
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