基于分布式表面肌电信号的笑声自动识别

S. Cosentino, S. Sessa, W. Kong, Di Zhang, A. Takanishi, N. Bianchi-Berthouze
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引用次数: 2

摘要

笑是一种非常有趣的人类非语言发声。尽管它是一种直接的社会互动形式,但它被归类为半自愿行为,并且可以由各种不同的刺激引起,包括认知和身体刺激。自动笑声检测、分析和分类将推动情感计算的进步,导致更自然的人机通信接口的发展。腹部肌肉表面肌电图(sEMG)或喉部侵入性肌电图显示了这一方向的潜力,但这些基于肌电图的传感系统由于其体积大、缺乏可重用性和设置不舒适而不能用于生态环境。由于这个原因,它们不能很容易地用于自然检测和测量一种不稳定的社会行为,比如在各种不同的情况下笑。我们建议在颈部使用微型、无线、干电极肌电信号传感器来检测和分析笑声。即使使用这种解决方案无法精确测量特定喉部肌肉的激活,也可以检测与喉部功能相关的不同肌电图模式。此外,将肌电图分析整合到一个位于颈部的多感官紧凑系统上,将提高整个传感系统的整体鲁棒性,从而能够同步测量笑声的不同特征,如声音产生、头部运动或面部表情;同时较不具侵入性,因为颈部通常比腹部肌肉更容易接近。在本文中,我们报告了在不同条件下用我们的系统得到的笑声识别率。
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Automatic discrimination of laughter using distributed sEMG
Laughter is a very interesting non-verbal human vocalization. It is classified as a semi voluntary behavior despite being a direct form of social interaction, and can be elicited by a variety of very different stimuli, both cognitive and physical. Automatic laughter detection, analysis and classification will boost progress in affective computing, leading to the development of more natural human-machine communication interfaces. Surface Electromyography (sEMG) on abdominal muscles or invasive EMG on the larynx show potential in this direction, but these kinds of EMG-based sensing systems cannot be used in ecological settings due to their size, lack of reusability and uncomfortable setup. For this reason, they cannot be easily used for natural detection and measurement of a volatile social behavior like laughter in a variety of different situations. We propose the use of miniaturized, wireless, dry-electrode sEMG sensors on the neck for the detection and analysis of laughter. Even if with this solution the activation of specific larynx muscles cannot be precisely measured, it is possible to detect different EMG patterns related to larynx function. In addition, integrating sEMG analysis on a multisensory compact system positioned on the neck would improve the overall robustness of the whole sensing system, enabling the synchronized measure of different characteristics of laughter, like vocal production, head movement or facial expression; being at the same time less intrusive, as the neck is normally more accessible than abdominal muscles. In this paper, we report laughter discrimination rate obtained with our system depending on different conditions.
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