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Symbolically structured database for human whole body motions based on association between motion symbols and motion words

机译:基于运动符号和运动词之间的关联的人体全身运动的符号结构数据库

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Motion capture systems have been commonly used to enable humanoid robots or CG characters to perform human-like motions. However, prerecorded motion capture data cannot be reused efficiently because picking a specific motion from a large database and modifying the motion data to fit the desired motion patterns are difficult tasks. We have developed an imitative learning framework based on the symbolization of motion patterns using Hidden Markov Models (HMMs), where each HMM (hereafter referred to as "motion symbol") abstracts the dynamics of a motion pattern and allows motion recognition and generation. This paper describes a symbolically structured motion database that consists of original motion data, motion symbols, and motion words. Each motion data is labeled with motion symbols and motion words. Moreover, a network is formed between two layers of motion symbols and motion words based on their probability association. This network makes it possible to associate motion symbols with motion words and to search for motion datasets using motion symbols. The motion symbols can also generate motion data. Therefore, the developed framework can provide the desired motion data when only the motion words are input into the database. (C) 2015 The Authors. Published by Elsevier B.V.
机译:运动捕捉系统已普遍用于使类人机器人或CG角色执行类似人的运动。但是,预先记录的运动捕获数据无法有效地重用,因为从大型数据库中选取特定运动并修改运动数据以适合所需的运动模式是一项艰巨的任务。我们已经使用隐马尔可夫模型(HMM)开发了基于运动模式符号化的模仿学习框架,其中每个HMM(以下称为“运动符号”)都对运动模式的动力学进行抽象,并允许运动识别和生成。本文介绍了一个由符号构成的运动数据库,该数据库由原始运动数据,运动符号和运动词组成。每个运动数据都用运动符号和运动字标记。此外,基于运动符号和运动词的概率关联在两层运动符号和运动词之间形成网络。该网络使得可以将运动符号与运动词相关联,并可以使用运动符号搜索运动数据集。运动符号也可以生成运动数据。因此,当仅将运动词输入数据库时​​,开发的框架可以提供所需的运动数据。 (C)2015作者。由Elsevier B.V.发布

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