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Prediction for human motion tracking failures

机译:人体运动跟踪失败的预测

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We propose a new and effective method of predicting tracking failures and apply it to the robust analysis of gait and human motion. We define a tracking failure as an event and describe its temporal characteristics using a hidden Markov model (HMM). We represent the human body using a three-dimensional, multicomponent structural model, where each component is designed to independently allow the extraction of certain gait variables. To enable a fault-tolerant tracking and feature extraction system, we introduce a single HMM for each element of the structural model, trained on previous examples of tracking failures. The algorithm derives vector observations for each Markov model using the time-varying noise covariance matrices of the structural model parameters. When transformed with a logarithmic function, the conditional output probability of each HMM is shown to have a causal relationship with imminent tracking failures. We demonstrate the effectiveness of the proposed approach on a variety of multiview video sequences of complex human motion.
机译:我们提出了一种新的有效的预测跟踪失败的方法,并将其应用于步态和人体运动的鲁棒分析。我们将跟踪失败定义为事件,并使用隐马尔可夫模型(HMM)描述其时间特征。我们使用三维多组件结构模型表示人体,其中每个组件都设计为独立允许提取某些步态变量。为了启用容错跟踪和特征提取系统,我们为结构模型的每个元素引入了单个HMM,并在先前的跟踪失败示例中进行了训练。该算法使用结构模型参数的时变噪声协方差矩阵为每个马尔可夫模型导出矢量观测值。当使用对数函数进行转换时,每个HMM的条件输出概率显示为与即将发生的跟踪失败具有因果关系。我们在复杂的人类运动的各种多视图视频序列上证明了该方法的有效性。

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