Causal affect prediction model using a past facial image sequence

Geesung Oh, Euiseok Jeong, Sejoon Lim
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引用次数: 11

Abstract

Among human affective behavior research, facial expression recognition research is improving in performance along with the development of deep learning. For improved performance, not only past images but also future images should be used along with corresponding facial images, but there are obstacles to the application of this technique to real-time environments. In this paper, we propose the causal affect prediction network (CAPNet), which uses only past facial images to predict corresponding affective valence and arousal. We train CAPNet to learn causal inference between past images and corresponding affective valence and arousal through supervised learning by pairing the sequence of past images with the current label using the Aff-Wild2 dataset. We show through experiments that the well-trained CAPNet outperforms the baseline of the second challenge of the Affective Behavior Analysis in-the-wild (ABAW2) Competition by predicting affective valence and arousal only with past facial images one-third of a second earlier. Therefore, in real-time application, CAPNet can reliably predict affective valence and arousal only with past data.The code is publicly available. 1
基于过去面部图像序列的因果影响预测模型
在人类情感行为研究中,随着深度学习的发展,面部表情识别研究的性能也在不断提高。为了提高性能,不仅需要使用过去的图像,还需要使用未来的图像以及相应的面部图像,但将该技术应用于实时环境存在障碍。在本文中,我们提出了因果影响预测网络(CAPNet),它只使用过去的面部图像来预测相应的情感效价和唤醒。我们通过使用af - wild2数据集将过去图像序列与当前标签配对,通过监督学习,训练CAPNet学习过去图像与相应的情感效价和唤醒之间的因果推理。我们通过实验证明,训练有素的CAPNet通过仅提前三分之一秒预测过去的面部图像的情感效价和唤醒,在野外情感行为分析(ABAW2)竞争的第二个挑战中优于基线。因此,在实时应用中,CAPNet仅用过去的数据就可以可靠地预测情感效价和唤醒。代码是公开的。1
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