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Predicting Missing Markers in Real-Time Optical Motion Capture

机译:预测实时光学运动捕捉中的丢失标记

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A common problem in optical motion capture of human-body movement is the so-called missing marker problem. The occlusion of markers can lead to significant problems in tracking accuracy unless a continuous flow of data is guaranteed by interpolation or extrapolation algorithms. Since interpolation algorithms require data sampled before and after an occlusion, they cannot be used for real-time applications. Extrapolation algorithms only require data sampled before an occlusion. Other algorithms require statistical data and are designed for postprocessing. In order to bridge sampling gaps caused by occluded markers and hence to improve 3D real-time motion capture, we suggest a computationally cost-efficient extrapolation algorithm partly combined with a so-called constraint matrix. The realization of this prediction algorithm does not require statistical data nor does it rely on an underlying kinematic human model with pre-defined marker distances. Under the assumption that human motion can be linear, circular, or a linear combination of both, a prediction method is realized. The paper presents measurements of a circular movement wherein a marker is briefly lost. The suggested extrapolation method behaves well for a reasonable number of frames, not exceeding around two seconds of time.
机译:人体运动的光学运动捕捉中的常见问题是所谓的标记丢失问题。除非通过插值或外推算法确保连续的数据流,否则标记的遮挡可能会导致跟踪精度出现重大问题。由于插值算法需要在遮挡前后采样的数据,因此不能用于实时应用。外推算法仅要求在遮挡之前采样数据。其他算法需要统计数据,并设计用于后处理。为了弥合由被遮挡的标记引起的采样间隙,从而改善3D实时运动捕获,我们建议一种计算上具有成本效益的外推算法,该算法部分与所谓的约束矩阵结合。该预测算法的实现不需要统计数据,也不需要依赖具有预定义标记距离的基础运动人体模型。在人类运动可以是线性,圆形或两者的线性组合的假设下,实现了一种预测方法。本文介绍了圆周运动的测量结果,其中标记暂时丢失了。建议的外推方法在合理的帧数下表现良好,不超过大约两秒钟的时间。

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