CVJun 23, 2017

Listen to Your Face: Inferring Facial Action Units from Audio Channel

arXiv:1706.07536v219 citations
AI Analysis

This addresses the problem of AU recognition in spontaneous speech for researchers and applications in human-computer interaction, offering a new paradigm that bypasses visual limitations.

The paper tackles the challenge of recognizing facial action units (AUs) during speech by proposing a novel audio-based method using a continuous time Bayesian network (CTBN), achieving promising performance that outperforms visual-based methods, especially for low-intensity AUs and in challenging conditions with head movements and occlusions.

Extensive efforts have been devoted to recognizing facial action units (AUs). However, it is still challenging to recognize AUs from spontaneous facial displays especially when they are accompanied with speech. Different from all prior work that utilized visual observations for facial AU recognition, this paper presents a novel approach that recognizes speech-related AUs exclusively from audio signals based on the fact that facial activities are highly correlated with voice during speech. Specifically, dynamic and physiological relationships between AUs and phonemes are modeled through a continuous time Bayesian network (CTBN); then AU recognition is performed by probabilistic inference via the CTBN model. A pilot audiovisual AU-coded database has been constructed to evaluate the proposed audio-based AU recognition framework. The database consists of a "clean" subset with frontal and neutral faces and a challenging subset collected with large head movements and occlusions. Experimental results on this database show that the proposed CTBN model achieves promising recognition performance for 7 speech-related AUs and outperforms the state-of-the-art visual-based methods especially for those AUs that are activated at low intensities or "hardly visible" in the visual channel. Furthermore, the CTBN model yields more impressive recognition performance on the challenging subset, where the visual-based approaches suffer significantly.

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