Peak-Piloted Deep Network for Facial Expression Recognition
Xiangyun Zhao, Xiaodan Liang, Luoqi Liu, Teng Li, Yugang Han, Nuno, Vasconcelos, Shuicheng Yan

TL;DR
This paper introduces a peak-piloted deep network (PPDN) that leverages peak expression samples to improve facial expression recognition by embedding the expression evolution process into the model, outperforming existing methods.
Contribution
The novel PPDN architecture and peak gradient suppression training strategy enable invariance to expression intensities and improve recognition accuracy.
Findings
Superior performance on Oulu-CASIA and CK+ datasets
Effective embedding of expression evolution process
Extensible to other face recognition tasks
Abstract
Objective functions for training of deep networks for face-related recognition tasks, such as facial expression recognition (FER), usually consider each sample independently. In this work, we present a novel peak-piloted deep network (PPDN) that uses a sample with peak expression (easy sample) to supervise the intermediate feature responses for a sample of non-peak expression (hard sample) of the same type and from the same subject. The expression evolving process from non-peak expression to peak expression can thus be implicitly embedded in the network to achieve the invariance to expression intensities. A special purpose back-propagation procedure, peak gradient suppression (PGS), is proposed for network training. It drives the intermediate-layer feature responses of non-peak expression samples towards those of the corresponding peak expression samples, while avoiding the inverse.…
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Taxonomy
TopicsEmotion and Mood Recognition · Face and Expression Recognition · Face recognition and analysis
