A data-driven approach to quantifying natural human motion

Liu Ren, A. Patrick, Alexei A. Efros, J. Hodgins, James M. Rehg
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引用次数: 186

Abstract

In this paper, we investigate whether it is possible to develop a measure that quantifies the naturalness of human motion (as defined by a large database). Such a measure might prove useful in verifying that a motion editing operation had not destroyed the naturalness of a motion capture clip or that a synthetic motion transition was within the space of those seen in natural human motion. We explore the performance of mixture of Gaussians (MoG), hidden Markov models (HMM), and switching linear dynamic systems (SLDS) on this problem. We use each of these statistical models alone and as part of an ensemble of smaller statistical models. We also implement a Naive Bayes (NB) model for a baseline comparison. We test these techniques on motion capture data held out from a database, keyframed motions, edited motions, motions with noise added, and synthetic motion transitions. We present the results as receiver operating characteristic (ROC) curves and compare the results to the judgments made by subjects in a user study.
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一个数据驱动的方法来量化自然人体运动
在本文中,我们研究是否有可能开发一种量化人体运动自然性的措施(由大型数据库定义)。这样的措施在验证动作编辑操作没有破坏动作捕捉剪辑的自然性或在人类自然运动中看到的空间内合成运动过渡时可能是有用的。我们探讨了混合高斯模型(MoG)、隐马尔可夫模型(HMM)和切换线性动态系统(SLDS)在这个问题上的性能。我们单独使用这些统计模型中的每一个,并将其作为较小统计模型集合的一部分。我们还实现了一个朴素贝叶斯(NB)模型进行基线比较。我们测试这些技术的动作捕捉数据从数据库,关键帧运动,编辑的运动,运动与噪声添加,和合成运动过渡。我们将结果呈现为受试者工作特征(ROC)曲线,并将结果与用户研究中受试者的判断进行比较。
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Session details: I3D (symposium on interactive 3D graphics) Session details: Mesh manipulation Session details: Texture synthesis Session details: Precomputed light transport Session details: Hardware rendering
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