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首页> 外文期刊>International Journal of Computer Vision >Markerless Motion Capture through Visual Hull, Articulated ICP and Subject Specific Model Generation
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Markerless Motion Capture through Visual Hull, Articulated ICP and Subject Specific Model Generation

机译:通过视觉外壳,铰接式ICP和特定主题模型生成的无标记运动捕捉

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摘要

An approach for accurately measuring human motion through Markerless Motion Capture (MMC) is presented. The method uses multiple color cameras and combines an accurate and anatomically consistent tracking algorithm with a method for automatically generating subject specific models. The tracking approach employed a Levenberg-Marquardt minimization scheme over an iterative closest point algorithm with six degrees of freedom for each body segment. Anatomical consistency was maintained by enforcing rotational and translational joint range of motion constraints for each specific joint. A subject specific model of the subjects was obtained through an automatic model generation algorithm (Corazza et al. in IEEE Trans. Biomed. Eng., 2009) which combines a space of human shapes (Anguelov et al. in Proceedings SIGGRAPH, 2005) with biomechanically consistent kinematic models and a pose-shape matching algorithm. There were 15 anatomical body segments and 14 joints, each with six degrees of freedom (13 and 12, respectively for the HumanEva II dataset). The overall method is an improvement over (Mundermann et al. in Proceedings of CVPR, 2007) in terms of both accuracy and robustness. Since the method was originally developed for a parts per thousand yen8 cameras, the method performance was tested both (i) on the HumanEva II dataset (Sigal and Black, Technical Report CS-06-08, 2006) in a 4 camera configuration, (ii) on a series of motions including walking trials, a very challenging gymnastic motion and a dataset with motions similar to HumanEva II but with variable number of cameras.
机译:提出了一种通过无标记运动捕获(MMC)准确测量人体运动的方法。该方法使用多个彩色相机,并将精确且解剖学上一致的跟踪算法与自动生成对象特定模型的方法结合在一起。跟踪方法采用Levenberg-Marquardt最小化方案,对每个人体节段使用六个自由度的迭代最近点算法。通过对每个特定关节实施运动约束的旋转和平移关节范围来保持解剖学一致性。通过自动模型生成算法(IEEE Trans。Biomed。Eng。,2009年的Corazza等人),将人体形状空间(Anguelov等人,Proceedings SIGGRAPH,2005年)与生物力学一致的运动学模型和姿态形状匹配算法。有15个解剖身体段和14个关节,每个都有六个自由度(对于HumanEva II数据集分别为13和12)。总体方法在准确性和鲁棒性方面都比(Mundermann等人在《 CVPR会议录》,2007年)有所改进。由于该方法最初是针对每千日元8个摄像机的零件开发的,因此该方法的性能在(i)在HumanEva II数据集(Sigal和Black,技术报告CS-06-08,2006)上以4个摄像机配置进行了测试,( ii)进行一系列运动,包括步行试验,极富挑战性的体操运动以及具有类似于HumanEva II的运动但摄像机数量可变的数据集。

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