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Real-time Estimation of Missing Markers in Human Motion Capture

机译:人体运动捕捉中标记丢失的实时估计

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This paper considers the problem of taking marker locations from optical motion capture data to identify and parameterise the underlying human skeleton structure and motion over time. It is concerned with real-time algorithms suitable for use within a visual feedback system. A common problem in motion capture is marker occlusion. Most current methods are only useful for offline processing or become ineffective when a significant portion of markers are missing for a long period of time. This paper presents a prediction algorithm, using a Kalman filter approach in combination with inferred information from neighbouring markers, to provide a continuous flow of data. The results are accurate and reliable even in cases where all markers on a limb are occluded, or one or two markers are not visible for a large sequence of frames. Pre-defined models are not required and skeleton fitting to this complete data can then be updated in real-time.
机译:本文考虑了从光学运动捕获数据中获取标记位置,以识别和参数化人体骨骼结构和运动随时间变化的问题。它涉及适合在视觉反馈系统中使用的实时算法。运动捕捉中的常见问题是标记物遮挡。大多数当前方法仅对脱机处理有用,或者在很长一段时间内缺少大量标记时无效。本文提出了一种预测算法,该算法将卡尔曼滤波方法与相邻标记的推断信息结合使用,以提供连续的数据流。即使在肢体上的所有标记都被遮挡,或者在较大的帧序列中看不到一个或两个标记的情况下,结果也是准确可靠的。不需要预定义的模型,可以实时更新与此完整数据相适应的骨架。

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