Auditory dialog analysis and understanding by generative modelling of interactional dynamics

M. Cristani, Anna Pesarin, C. Drioli, A. Tavano, A. Perina, Vittorio Murino
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引用次数: 11

Abstract

In the last few years, the interest in the analysis of human behavioral schemes has dramatically grown, in particular for the interpretation of the communication modalities called social signals. They represent well defined interaction patterns, possibly unconscious, characterizing different conversational situations and behaviors in general. In this paper, we illustrate an automatic system based on a generative structure able to analyze conversational scenarios. The generative model is composed by integrating a Gaussian mixture model and the (observed) influence model, and it is fed with a novel kind of simple low-level auditory social signals, which are termed steady conversational periods (SCPs). These are built on duration of continuous slots of silence or speech, taking also into account conversational turn-taking. The interactional dynamics built upon the transitions among SCPs provide a behavioral blueprint of conversational settings without relying on segmental or continuous phonetic features. Our contribution here is to show the effectiveness of our model when applied on dialogs classification and clustering tasks, considering dialogs between adults and between children and adults, in both flat and arguing discussions, and showing excellent performances also in comparison with state-of-the-art frameworks.
通过互动动态的生成建模来分析和理解听觉对话
在过去的几年里,对人类行为模式分析的兴趣急剧增长,特别是对被称为社会信号的交流方式的解释。它们代表了定义良好的交互模式,可能是无意识的,通常表征不同的会话情境和行为。在本文中,我们演示了一个基于生成结构的自动系统,该系统能够分析会话场景。生成模型由高斯混合模型和(观察到的)影响模型集成而成,并以一种新颖的简单低层次听觉社会信号作为输入,这些信号被称为稳定会话期(SCPs)。这些是建立在沉默或讲话的连续时段的持续时间上的,同时也考虑到对话的轮流。建立在scp之间转换的互动动态提供了会话设置的行为蓝图,而不依赖于分段或连续的语音特征。我们在这里的贡献是展示了我们的模型在应用于对话分类和聚类任务时的有效性,考虑到成人之间以及儿童与成人之间的对话,在扁平和争论的讨论中,并且与最先进的框架相比也显示出出色的性能。
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