Expressive motion with x, y and theta: Laban Effort Features for mobile robots

H. Knight, R. Simmons
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引用次数: 84

Abstract

There is a saying that 95% of communication is body language, but few robot systems today make effective use of that ubiquitous channel. Motion is an essential area of social communication that will enable robots and people to collaborate naturally, develop rapport, and seamlessly share environments. The proposed work presents a principled set of motion features based on the Laban Effort system, a widespread and extensively tested acting ontology for the dynamics of “how” we enact motion. The features allow us to analyze and, in future work, generate expressive motion using position (x, y) and orientation (theta). We formulate representative features for each Effort and parameterize them on expressive motion sample trajectories collected from experts in robotics and theater. We then produce classifiers for different “manners” of moving and assess the quality of results by comparing them to the humans labeling the same set of paths on Amazon Mechanical Turk. Results indicate that the machine analysis (41.7% match between intended and classified manner) achieves similar accuracy overall compared to a human benchmark (41.2% match). We conclude that these motion features perform well for analyzing expression in low degree of freedom systems and could be used to help design more effectively expressive mobile robots.
带有x, y和theta的表达运动:移动机器人的Laban努力特征
有一种说法,95%的交流是肢体语言,但今天很少有机器人系统有效地利用这种无处不在的渠道。运动是社会交流的一个重要领域,它将使机器人和人类自然协作,发展融洽关系,无缝地共享环境。提出的工作提出了一套基于Laban努力系统的原则性运动特征,Laban努力系统是一个广泛和广泛测试的行动本体,用于“如何”制定运动的动力学。这些功能使我们能够分析并在未来的工作中使用位置(x, y)和方向(theta)生成表达性动作。我们为每个努力制定有代表性的特征,并将它们参数化在机器人和戏剧专家收集的富有表现力的运动样本轨迹上。然后,我们为不同的移动“方式”生成分类器,并通过将它们与在Amazon Mechanical Turk上标记同一组路径的人类进行比较来评估结果的质量。结果表明,机器分析(预期和分类方式之间的41.7%匹配)与人类基准(41.2%匹配)相比,总体上达到了相似的准确性。我们得出结论,这些运动特征可以很好地分析低自由度系统的表达,并可以用来帮助设计更有效地表达移动机器人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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