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A kinematic model for Bayesian tracking of cyclic human motion

机译:一种循环人体运动贝叶斯追踪的运动模式

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We introduce a two-dimensional kinematic model for cyclic motions of humans, which is suitable for the use as temporal prior in any Bayesian tracking framework. This human motion model is solely based on simple kinematic, properties: the joint accelerations. Distributions of joint accelerations subject to the cycle progress are learned from training data. We present results obtained by applying the introduced model to the cyclic motion.of backstroke swimming in a Kalman filter framework that represents the posterior distribution by a Gaussian.We experimentally evaluate the sensitivity of the motion model with respect to the frequency and noise level of assumed appearance-based pose measurements by simulating various fidelities of the pose measurements using ground truth data.
机译:我们介绍了一种用于人类循环运动的二维运动模型,适用于在任何贝叶斯追踪框架之前的时间用作时间。这种人体运动模型仅基于简单的运动,属性:联合加速度。从训练数据中汲取循环进度后的联合加速度的分布。我们通过将介绍的模型应用于循环运动来提供的结果。在卡尔曼滤波器框架中,仰泳游泳,表示通过高斯的后路。我们通过实验评估运动模型相对于假定的频率和噪声水平的灵敏度通过使用地面真理数据模拟姿态测量的各种保真度来基于外观的姿态测量。

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