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首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Construction of a space of motion labels from their mapping to full-body motion symbols
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Construction of a space of motion labels from their mapping to full-body motion symbols

机译:从运动标签到全身运动符号的映射构造空间

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摘要

Language is an indispensable for humanoid robot to be integrated into daily life. This paper proposes a novel approach to construct a space of motion labels from their mapping to human whole body motions. The motions are abstracted by Hidden Markov Models, which are referred to as motion symbols. The human motions are automatically partitioned into motion segments, and recognized as sequences of the motion symbols. Sequences of motion labels are also assigned to these motions. The referential relationship between the motion symbols and the motion labels is extracted by stochastic translation model, and distances among the labels are calculated from the association probability of the motion symbols being generated by the labels. The labels are located in a multidimensional space so that the distances are satisfied, and it results in a label space. The label space encapsulates relations among the motion labels such as their similarities. The label space also allows motion recognition. The validity of the constructed label space is demonstrated on a motion capture data-set.
机译:语言是类人机器人融入日常生活的必不可少的部分。本文提出了一种新颖的方法来构造运动标签的空间,从它们到人体全身运动的映射。通过隐马尔可夫模型将运动抽象化,这些模型称为运动符号。人体运动会自动划分为运动段,并被识别为运动符号序列。运动标签序列也分配给这些运动。通过随机转换模型提取运动符号与运动标签之间的参照关系,并根据标签产生的运动符号的关联概率来计算标签之间的距离。标签位于多维空间中,因此可以满足距离要求,从而形成标签空间。标签空间封装了运动标签之间的关系,例如它们的相似性。标签空间还允许运动识别。在运动捕获数据集上证明了构造的标签空间的有效性。

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