Occlusion-robust Face Alignment using A Viewpoint-invariant Hierarchical Network Architecture

Congcong Zhu, Xintong Wan, Shaorong Xie, Xiaoqiang Li, Yinzheng Gu
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引用次数: 4

Abstract

The occlusion problem heavily degrades the localization performance of face alignment. Most current solutions for this problem focus on annotating new occlusion data, introducing boundary estimation, and stacking deeper models to improve the robustness of neural networks. However, the performance degradation of models remains under extreme occlusion (i.e. average occlusion of over 50%) because of missing a large amount of facial context information. We argue that exploring neural networks to model the facial hierarchies is a more promising method for dealing with extreme occlusion. Surprisingly, in recent studies, little effort has been devoted to representing the facial hierarchies using neural networks. This paper proposes a new network architecture called GlomFace to model the facial hierarchies against various occlusions, which draws inspiration from the viewpoint-invariant hierarchy of facial structure. Specifically, GlomFace is functionally divided into two modules: the part-whole hierarchical module and the whole-part hierarchical module. The former captures the part-whole hierarchical dependencies of facial parts to suppress multi-scale occlusion information, whereas the latter injects structural reasoning into neural networks by building the whole-part hierarchical relations among facial parts. As a result, GlomFace has a clear topological interpretation due to its correspondence to the facial hierarchies. Extensive experimental results indicate that the proposed GlomFace performs comparably to existing state-of-the-art methods, especially in cases of extreme occlusion. Models are available at https://github.com/zhuccly/GlomFace-Face-Alignment.
基于视点不变的分层网络结构的抗遮挡人脸对齐
遮挡问题严重影响了人脸对齐的定位性能。目前该问题的大多数解决方案都集中在注释新的遮挡数据,引入边界估计和堆叠更深的模型以提高神经网络的鲁棒性。然而,由于缺少大量的面部上下文信息,在极端遮挡(即平均遮挡超过50%)下,模型的性能下降仍然存在。我们认为,探索神经网络来模拟面部层次是一种更有前途的方法来处理极端遮挡。令人惊讶的是,在最近的研究中,很少有人致力于用神经网络来表示面部层次。本文从人脸结构的视点不变层次结构中得到启发,提出了一种新的网络结构——GlomFace来对不同遮挡下的人脸层次结构进行建模。具体来说,GlomFace在功能上分为两个模块:部分-整体分层模块和整体-部分分层模块。前者捕获面部部分-整体的层次依赖关系,抑制多尺度遮挡信息;后者通过构建面部部分之间的整体-部分层次关系,在神经网络中注入结构推理。因此,GlomFace具有清晰的拓扑解释,因为它对应于面部层次结构。大量的实验结果表明,所提出的GlomFace与现有的最先进的方法相比,特别是在极端闭塞的情况下。模型可在https://github.com/zhuccly/GlomFace-Face-Alignment上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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