Video-Based Face Alignment With Local Motion Modeling

Romain Belmonte, Nacim Ihaddadene, Pierre Tirilly, Ioan Marius Bilasco, C. Djeraba
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引用次数: 8

Abstract

Face alignment remains difficult under uncontrolled conditions due to the many variations that may considerably impact facial appearance. Recently, video-based approaches have been proposed, which take advantage of temporal coherence to improve robustness. These new approaches suffer from limited temporal connectivity. We show that early, direct pixel connectivity enables the detection of local motion patterns and the learning of a hierarchy of motion features. We integrate local motion to the two predominant models in the literature, coordinate regression networks and heatmap regression networks, and combine it with late connectivity based on recurrent neural networks. The experimental results on two datasets, 300VW and SNaP-2DFe, show that local motion improves video-based face alignment and is complementary to late temporal information. Despite the simplicity of the proposed architectures, our best model provides competitive performance with more complex models from the literature.
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基于视频的人脸对齐与局部运动建模
在不受控制的条件下,面部对齐仍然很困难,因为许多变化可能会严重影响面部外观。最近,人们提出了基于视频的方法,利用时间相干性来提高鲁棒性。这些新方法存在时间连接有限的问题。我们表明,早期的直接像素连接可以检测局部运动模式并学习运动特征的层次结构。我们将局部运动整合到文献中的两种主要模型中,坐标回归网络和热图回归网络,并将其与基于递归神经网络的晚期连通性相结合。在300VW和SNaP-2DFe两个数据集上的实验结果表明,局部运动改善了基于视频的人脸对齐,并与后期时间信息相补充。尽管所提出的体系结构很简单,但我们最好的模型提供了与文献中更复杂的模型竞争的性能。
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