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Analyze Spontaneous Gestures for Emotional Stress State Recognition: A Micro-gesture Dataset and Analysis with Deep Learning

机译:分析自发手势以进行情绪压力状态识别:微观手势数据集和深度学习分析

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Emotions are central for human intelligence and should have a similar role in AI. When it comes to emotion recognition, however, analysis cues for robots were mostly limited to human facial expressions and speech. As an alternative important non-verbal communicative fashion, the body gesture is proved to be capable of conveying emotional information which should gain more attention. Inspired by recent researches on micro-expressions, in this paper, we try to explore a specific group of gestures which are spontaneously and unconsciously elicited by inner feelings. These gestures are different from common gestures for facilitating communications or to express feelings on ones own initiative and always ignored in our daily life. This kind of subtle body movements is known as `micro-gestures' (MGs). Work of interpreting the human hidden emotions via these specific gestural behaviors in unconstrained situations, however, is limited. It is because of an unclear correspondence between body movements and emotional states which need multidisciplinary efforts from computer science, psychology, and statistic researchers. To fill the gap, we built a novel Spontaneous Micro-Gesture (SMG) dataset containing 3,692 manually labeled gesture clips. The data collection from 40 participants was conducted through a story-telling game with two emotional state settings. In this paper, we explored the emotional gestures with a sign-based measurement. To verify the latent relationship between emotional states and MGs, we proposed a framework that encodes the objective gestures to a Bayesian network to infer the subjective emotional states. Our experimental results revealed that, most of the participants would do `micro-gestures' spontaneously to relieve their mental strains. We also carried out a human test on ordinary and trained people for comparison. The performance of both our framework and human beings was evaluated on 142 testing instances (71 for each emotional state) by subject-independent testing. To authors' best knowledge, this is the first presented MG dataset. Results showed that the proposed MG recognition method achieved promising performance. We also showed that MGs could be helpful cues for the recognition of hidden emotional states.
机译:情感对于人类智能至关重要,在人工智能中也应扮演类似的角色。但是,在情感识别方面,针对机器人的分析线索主要限于人的面部表情和语音。作为一种重要的非言语交际方式,事实证明,身体手势能够传达情感信息,应引起更多关注。受到最近关于微表情的研究的启发,我们尝试探索由内在感觉自发和无意识引起的特定手势。这些手势不同于促进交流或主动表达情感的常见手势,在我们的日常生活中经常被忽略。这种微妙的身体运动被称为“微手势”(MG)。但是,在不受限制的情况下,通过这些特定的手势行为来解释人类隐藏的情感的工作是有限的。这是由于身体运动与情绪状态之间的对应关系不清楚,需要计算机科学,心理学和统计研究人员的多学科努力。为了填补空白,我们建立了一个新的自发微手势(SMG)数据集,其中包含3692个手动标记的手势剪辑。来自40名参与者的数据收集是通过具有两种情绪状态设置的故事游戏进行的。在本文中,我们使用基于手势的测量方法来探索情绪手势。为了验证情绪状态和MG之间的潜在关系,我们提出了一个框架,该框架将客观手势编码为贝叶斯网络以推断主观情绪状态。我们的实验结果表明,大多数参与者会自发地做“微手势”以减轻他们的精神压力。我们还对普通人和受过训练的人进行了人体测试,以进行比较。通过独立于受试者的测试,在142个测试实例(每个情绪状态为71个)上评估了我们框架和人类的性能。据作者所知,这是第一个展示的MG数据集。结果表明,所提出的MG识别方法具有良好的性能。我们还表明,MG可能有助于识别隐藏的情绪状态。

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