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Stochastic kinematic modeling and feature extraction for gait analysis

机译:步态分析的随机运动学建模和特征提取

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This research presents a new model-based approach toward the three-dimensional (3-D) tracking and extraction of gait and human motion. We suggest the use of a hierarchical, structural model of the human body that introduces the concept of soft kinematic constraints. These constraints take the form of a priori, stochastic distributions learned from previous configurations of the body exhibited during specific activities; they are used to supplement an existing motion model limited by hard kinematic constraints. We use time-varying parameters of the structural model to measure gait velocity, stance width, stride length, stance times, and other gait variables with multiple degrees of accuracy and robustness. To characterize tracking performance, we also introduce a novel geometric model of expected tracking failures. We demonstrate and quantify the performance of the suggested models using multi-view, video sequences of human movement captured in a complex home environment.
机译:这项研究为步态和人体运动的三维(3-D)跟踪和提取提出了一种基于模型的新方法。我们建议使用人体的层次结构模型来引入软运动约束的概念。这些约束采取先验的,随机的分布形式,这些分布是从在特定活动中表现出的身体先前形态学到的;它们用于补充受硬运动学约束限制的现有运动模型。我们使用结构模型的时变参数来测量步态速度,步态宽度,步幅长度,步态时间以及其他步态变量,并具有多个准确度和鲁棒性。为了表征跟踪性能,我们还介绍了预期跟踪失败的新型几何模型。我们使用复杂的家庭环境中捕获的人类运动的多视图视频序列来演示和量化建议模型的性能。

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