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ARBEE: Towards Automated Recognition of Bodily Expression of Emotion in the Wild

机译:ARBEE:在野外自动识别身体表达情感

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摘要

Humans are arguably innately prepared to comprehend others' emotional expressions from subtle body movements. If robots or computers can be empowered with this capability, a number of robotic applications become possible. Automatically recognizing human bodily expression in unconstrained situations, however, is daunting given the incomplete understanding of the relationship between emotional expressions and body movements. The current research, as a multidisciplinary effort among computer and information sciences, psychology, and statistics, proposes a scalable and reliable crowdsourcing approach for collecting in-the-wild perceived emotion data for computers to learn to recognize body languages of humans. To accomplish this task, a large and growing annotated dataset with 9876 video clips of body movements and 13,239 human characters, named Body Language Dataset (BoLD), has been created. Comprehensive statistical analysis of the dataset revealed many interesting insights. A system to model the emotional expressions based on bodily movements, named Automated Recognition of Bodily Expression of Emotion (ARBEE), has also been developed and evaluated. Our analysis shows the effectiveness of Laban Movement Analysis (LMA) features in characterizing arousal, and our experiments using LMA features further demonstrate computability of bodily expression. We report and compare results of several other baseline methods which were developed for action recognition based on two different modalities, body skeleton and raw image. The dataset and findings presented in this work will likely serve as a launchpad for future discoveries in body language understanding that will enable future robots to interact and collaborate more effectively with humans.
机译:人类可以说是准备好的准备将别人的情感表达从微妙的身体运动中。如果机器人或计算机可以赋予这种能力,则可以获得许多机器人应用。然而,鉴于对情绪表达与身体运动之间的关系的不完全理解,自动识别人类的身体表达是令人生意的。作为计算机和信息科学,心理学和统计数据之间的多学科努力,目前的研究提出了一种可扩展且可靠的众群方法,用于收集用于计算机的野外感知的情感数据,以学会识别人体语言。为完成此任务,已创建具有9876个视频片段的大型和不断增长的注释数据集和13,239名人物字符,命名为正文数据集(粗体)。数据集的综合统计分析显示了许多有趣的见解。还开发和评估了基于身体运动的基于身体运动的情感表达式模拟情感表达的系统,并进行了自动识别情感(Arbee)的自动识别,并进行了评估。我们的分析表明,Laban运动分析(LMA)特征在表征唤醒中的有效性,以及我们使用LMA特征的实验进一步证明了体表达的可测量。我们报告并比较了几种其他基线方法的结果,该方法是基于两种不同的方式,身体骨架和原始图像而开发的行动识别。本工作中提供的数据集和调查结果可能是用于未来的肢体语言理解的发现,这将使未来的机器人能够更有效地与人类互动和协作。

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