面部肌电图的隐形潜力:肌电图和计算机视觉在区分姿势微笑和自发微笑时的比较

Monica Perusquía-Hernández, S. Ayabe‐Kanamura, Kenji Suzuki, Shiro Kumano
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引用次数: 25

摘要

积极的体验是产品和服务设计成功的衡量标准。量化微笑是一种持续评估微笑的方法。微笑通常是一种积极影响的暗示,但它们也可以是自愿制造的。在识别微笑类型的差异方面,自动检测是对人类感知的一个有希望的补充。计算机视觉(CV)和面部远端肌电图(EMG)已被证明是成功的。这是第一个使用不遮挡面部的可穿戴式肌电图来比较CV和肌电图测量在区分姿势微笑和自然微笑的任务中的表现的研究。结果表明,肌电图具有识别视觉无法识别的隐蔽行为的优势。此外,CV似乎能够识别人类法官无法解释的可见动态特征。这揭示了不可观察行为在区分与情感相关的微笑和礼貌的积极情感表现方面的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Invisible Potential of Facial Electromyography: A Comparison of EMG and Computer Vision when Distinguishing Posed from Spontaneous Smiles
Positive experiences are a success metric in product and service design. Quantifying smiles is a method of assessing them continuously. Smiles are usually a cue of positive affect, but they can also be fabricated voluntarily. Automatic detection is a promising complement to human perception in terms of identifying the differences between smile types. Computer vision (CV) and facial distal electromyography (EMG) have been proven successful in this task. This is the first study to use a wearable EMG that does not obstruct the face to compare the performance of CV and EMG measurements in the task of distinguishing between posed and spontaneous smiles. The results showed that EMG has the advantage of being able to identify covert behavior not available through vision. Moreover, CV appears to be able to identify visible dynamic features that human judges cannot account for. This sheds light on the role of non-observable behavior in distinguishing affect-related smiles from polite positive affect displays.
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