Exploiting Correlation between Body Gestures and Spoken Sentences for Real-time Emotion Recognition

Fabrizio Milazzo, A. Augello, G. Pilato, V. Gentile, A. Gentile, S. Sorce
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Abstract

Humans communicate their affective states through different media, both verbal and non-verbal, often used at the same time. The knowledge of the emotional state plays a key role to provide personalized and context-related information and services. This is the main reason why several algorithms have been proposed in the last few years for the automatic emotion recognition. In this work we exploit the correlation between one's affective state and the simultaneous body expressions in terms of speech and gestures. Here we propose a system for real-time emotion recognition from gestures. In a first step, the system builds a trusted dataset of association pairs (motion data → emotion pattern), also based on textual information. Such dataset is the ground truth for a further step, where emotion patterns can be extracted from new unclassified gestures. Experimental results demonstrate a good recognition accuracy and real-time capabilities of the proposed system.
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利用肢体动作和口语句子之间的相关性进行实时情绪识别
人类通过不同的媒介,包括语言和非语言,经常同时使用来传达他们的情感状态。对情绪状态的了解在提供个性化和情境相关的信息和服务方面起着关键作用。这就是为什么在过去的几年中提出了几种自动情绪识别算法的主要原因。在这项工作中,我们利用一个人的情感状态和同时的身体表达在言语和手势方面的相关性。在这里,我们提出了一个实时的手势情感识别系统。在第一步,系统建立一个可信的关联对数据集(运动数据→情感模式),同样基于文本信息。这样的数据集是下一步的基础,可以从新的未分类手势中提取情感模式。实验结果表明,该系统具有良好的识别精度和实时性。
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