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Human Body Motion Capture from Multi-Image Video Sequences

机译:来自多图像视频序列的人体运动捕获

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In this paper is presented a method to capture the motion of the human body from multi image video sequences without using markers. The process is composed of five steps: acquisition of video sequences, calibration of the system, surface measurement of the human body for each frame, 3-D surface tracking and tracking of key points. The image acquisition system is currently composed of three synchronized progressive scan CCD cameras and a frame grabber which acquires a sequence of triplet images. Self calibration methods are applied to gain exterior orientation of the cameras, the parameters of internal orientation and the parameters modeling the lens distortion. From the video sequences, two kinds of 3-D information are extracted: a three-dimensional surface measurement of the visible parts of the body for each triplet and 3-D trajectories of points on the body. The approach for surface measurement is based on multi-image matching, using the adaptive least squares method. A full automatic matching process determines a dense set of corresponding points in the triplets. The 3-D coordinates of the matched points are then computed by forward ray intersection using the orientation and calibration data of the cameras. The tracking process is also based on least squares matching techniques. Its basic idea is to track triplets of corresponding points in the three images through the sequence and compute their 3-D trajectories. The spatial correspondences between the three images at the same time and the temporal correspondences between subsequent frames are determined with a least squares matching algorithm. The results of the tracking process are the coordinates of a point in the three images through the sequence, thus the 3-D trajectory is determined y computing the 3-D coordinates of the point at each time step by forward ray intersection. Velocities and accelerations are also computed. The advantage of this tracking process is twofold: it can track natural points, without using markers; and it can track local surfaces on the human body. In the last case, the tracking process is applied to all the points matched in the region of interest. The result can be seen as a vector field of trajectories (position, velocity and acceleration). The last step of the process is the definition of selected key points of the human body. A key point is a 3-D region defined in the vector field of trajectories, whose size can vary and whose position is defined by its center of gravity. The key points are tracked in a simple way: the position at the next time step is established by the mean value of the displacement of all the trajectories inside its region. The tracked key points lead to a final result comparable to the conventional motion capture systems: 3-D trajectories of key points which can be afterwards analyzed and used for animation or medical purposes.
机译:本文提出了一种捕获人体与多图像视频序列的运动而不使用标记的方法。该过程由五个步骤组成:获取视频序列,系统的校准,每个帧的人体的表面测量,3-D表面跟踪和关键点的跟踪。图像采集系统目前由三个同步逐行扫描CCD摄像机和帧抓取器组成,该帧抓取器获取一系列三态图像。自校准方法应用于增益摄像机的外向方向,内部方向的参数和建模镜头失真的参数。从视频序列中,提取两种3-D信息:对于每个三联网的每个三联网和3-D轨迹的位置的三维表面测量。表面测量方法基于多图像匹配,使用自适应最小二乘法。完整的自动匹配过程确定三元组中的相应点集合。然后,使用相机的方向和校准数据来计算匹配点的3-D坐标。跟踪过程还基于最小二乘匹配技术。其基本思想是通过序列跟踪三个图像中的相应点的三胞胎,并计算其3-D轨迹。用最小二乘匹配算法确定三个图像之间的三个图像之间的空间对应关系和后续帧之间的时间对应关系。跟踪过程的结果是通过序列的三个图像中的点的坐标,因此确定了3-D轨迹,从向前光线交叉点处计算每次的点的3-D坐标。还计算了速度和加速度。这种跟踪过程的优势是双重的:它可以跟踪自然点,而不使用标记;它可以跟踪人体上的局部表面。在最后一个情况下,跟踪过程应用于在感兴趣区域中匹配的所有点。结果可以被视为轨迹的矢量场(位置,速度和加速度)。该过程的最后一步是人体所选关键点的定义。关键点是在轨迹的矢量场中定义的3-D区域,其尺寸可以变化,其位置由其重心定义。关键点以简单的方式跟踪:下次步骤的位置是由其区域内所有轨迹的位移的平均值建立的。跟踪的关键点导致最终结果与传统的运动捕获系统相当:3-D轨迹的关键点可以分析并用于动画或医学目的。

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