An Investigation on the Effectiveness of Multimodal Fusion and Temporal Feature Extraction in Reactive and Spontaneous Behavior Generative RNN Models for Listener Agents

Hung-Hsuan Huang, Masato Fukuda, T. Nishida
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引用次数: 2

Abstract

Like a human listener, a listener agent reacts to its communicational partners' non-verbal behaviors such as head nods, facial expressions, and voice tone. When adopting these modalities as inputs and develop the generative model of reactive and spontaneous behaviors using machine learning techniques, the issues of multimodal fusion emerge. That is, the effectiveness of different modalities, frame-wise interaction of multiple modalities, and temporal feature extraction of individual modalities. This paper describes our investigation on these issues of the task in generating of virtual listeners' reactive and spontaneous idling behaviors. The work is based on the comparison of corresponding recurrent neural network (RNN) configurations in the performance of generating listener's (the agent) head movements, gaze directions, facial expressions, and postures from the speaker's head movements, gaze directions, facial expressions, and voice tone. A data corpus recorded in a subject experiment of active listening is used as the ground truth. The results showed that video information is more effective than audio information, and frame-wise interaction of modalities is more effective than temporal characteristics of individual modalities.
响应性和自发行为生成RNN模型中多模态融合和时间特征提取的有效性研究
就像人类的倾听者一样,倾听者代理会对交流伙伴的非语言行为做出反应,比如点头、面部表情和语调。当采用这些模式作为输入并使用机器学习技术开发反应性和自发行为的生成模型时,多模式融合的问题就出现了。即不同模态的有效性、多模态的逐帧交互以及单个模态的时间特征提取。本文描述了我们对虚拟听者反应性和自发空转行为产生任务中这些问题的研究。这项工作是基于比较相应的循环神经网络(RNN)配置,从说话者的头部运动、凝视方向、面部表情和语音语调中生成听者(代理)的头部运动、凝视方向、面部表情和姿势。在主动倾听实验中记录的数据语料库被用作基础事实。结果表明,视频信息比音频信息更有效,模态的逐帧交互比单个模态的时间特征更有效。
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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