评价语音,面部,情绪和身体运动时间序列特征的自动多模态演示评分

Vikram Ramanarayanan, C. W. Leong, L. Chen, G. Feng, David Suendermann-Oeft
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引用次数: 45

摘要

我们分析了如何融合从不同的多模态数据流中获得的特征,如语音,面部,身体运动和情感轨迹,可以应用于多模态演示的评分。我们从这些数据流中计算时间聚合和基于时间序列的特征——前者是在整个时间序列中计算的统计函数和其他累积特征,而后者被称为共同发生的直方图,捕捉在多模态、多变量时间序列的演变中,不同的原型身体姿势或面部配置如何在不同的时间滞后内共同发生。我们研究了这些特征的相对效用,以及在预测演示熟练程度的多个方面的人类评分分数方面的策划语音流特征。我们发现不同的模式在预测不同的方面是有用的,甚至在分析的方面的一个子集中优于幼稚的人类内部协议基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Speech, Face, Emotion and Body Movement Time-series Features for Automated Multimodal Presentation Scoring
We analyze how fusing features obtained from different multimodal data streams such as speech, face, body movement and emotion tracks can be applied to the scoring of multimodal presentations. We compute both time-aggregated and time-series based features from these data streams--the former being statistical functionals and other cumulative features computed over the entire time series, while the latter, dubbed histograms of cooccurrences, capture how different prototypical body posture or facial configurations co-occur within different time-lags of each other over the evolution of the multimodal, multivariate time series. We examine the relative utility of these features, along with curated speech stream features in predicting human-rated scores of multiple aspects of presentation proficiency. We find that different modalities are useful in predicting different aspects, even outperforming a naive human inter-rater agreement baseline for a subset of the aspects analyzed.
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