High-Level Geometry-based Features of Video Modality for Emotion Prediction

Raphaël Weber, Vincent Barrielle, Catherine Soladié, R. Séguier
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引用次数: 18

Abstract

The automatic analysis of emotion remains a challenging task in unconstrained experimental conditions. In this paper, we present our contribution to the 6th Audio/Visual Emotion Challenge (AVEC 2016), which aims at predicting the continuous emotional dimensions of arousal and valence. First, we propose to improve the performance of the multimodal prediction with low-level features by adding high-level geometry-based features, namely head pose and expression signature. The head pose is estimated by fitting a reference 3D mesh to the 2D facial landmarks. The expression signature is the projection of the facial landmarks in an unsupervised person-specific model. Second, we propose to fuse the unimodal predictions trained on each training subject before performing the multimodal fusion. The results show that our high-level features improve the performance of the multimodal prediction of arousal and that the subjects fusion works well in unimodal prediction but generalizes poorly in multimodal prediction, particularly on valence.
基于高级几何的情感预测视频模态特征
在不受约束的实验条件下,情绪的自动分析仍然是一项具有挑战性的任务。在本文中,我们展示了我们对第六届视听情感挑战(AVEC 2016)的贡献,该挑战旨在预测唤醒和效价的连续情感维度。首先,我们提出通过添加基于几何的高级特征(即头部姿态和表情特征)来提高具有低级特征的多模态预测的性能。通过将参考3D网格拟合到2D面部地标来估计头部姿势。表情签名是在无监督的个人特定模型中面部标志的投影。其次,我们建议在进行多模态融合之前,先融合在每个训练主题上训练的单模态预测。结果表明,我们的高层次特征提高了唤醒的多模态预测的性能,并且被试融合在单模态预测中效果良好,但在多模态预测中泛化效果较差,尤其是在价态预测中。
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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