评估数据驱动的统计人体运动重建的协方差矩阵约束

Christos Mousas, Paul F. Newbury, C. Anagnostopoulos
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引用次数: 20

摘要

在对运动先验学习过程的协方差矩阵施加约束的同时,提出了对人物运动重建的评价过程。对于评估过程,首先生成一个最大后验(MAP)框架,该框架接收输入轨迹并重建角色的运动。然后,使用各种方法约束协方差矩阵,检索反映运动重建过程某些假设的信息。每个协方差矩阵约束通过使用大量运动数据或使用仅包含特定运动的小数据集重建所需运动序列的能力来评估。
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Evaluating the covariance matrix constraints for data-driven statistical human motion reconstruction
This paper presents the evaluation process of the character's motion reconstruction while constraints are applied to the covariance matrix of the motion prior learning process. For the evaluation process, a maximum a posteriori (MAP) framework is first generated, which receives input trajectories and reconstructs the motion of the character. Then, using various methods to constrain the covariance matrix, information that reflects certain assumptions about the motion reconstruction process is retrieved. Each of the covariance matrix constraints are evaluated by its ability to reconstruct the desired motion sequences either by using a large amount of motion data or by using a small dataset that contains only specific motions.
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