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Motion based markerless gait analysis using standard events of gait and ensemble Kalman filtering

机译:使用步态和集合卡尔曼滤波的标准事件进行基于运动的无标记步态分析

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We present a novel approach to gait analysis using ensemble Kalman filtering which permits markerless determination of segmental movement. We use image flow analysis to reliably compute temporal and kinematic measures including the translational velocity of the torso and rotational velocities of the lower leg segments. Detecting the instances where velocity changes direction also determines the standard events of a gait cycle (double-support, toe-off, mid-swing and heel-strike). In order to determine the kinematics of lower limbs, we model the synergies between the lower limb motions (thigh-shank, shank-foot) by building a nonlinear dynamical system using CMUs 3D motion capture database [1]. This information is fed into the ensemble Kalman Filter framework to estimate the unobserved limb (upper leg and foot) motion from the measured lower leg rotational velocity. Our approach does not require calibrated cameras or special markers to capture movement. We have tested our method on different gait sequences collected from the sagttal plane and presented the estimated kinematics overlaid on the original image frames. We have also validated our approach by manually labeling the videos and comparing our results against them.
机译:我们提出了一种使用集成卡尔曼滤波进行步态分析的新方法,该方法可以无标记地确定节段运动。我们使用图像流分析来可靠地计算时间和运动学指标,包括躯干的平移速度和小腿段的旋转速度。检测速度变化方向的实例还可以确定步态周期的标准事件(双支撑,脚趾离开,中摆和后跟打击)。为了确定下肢的运动学,我们通过使用CMUs 3D运动捕捉数据库构建非线性动力学系统,对下肢运动(大腿,大腿和小腿-脚)之间的协同作用进行建模。该信息被输入到集合卡尔曼滤波器框架中,以根据测得的小腿旋转速度来估计未观察到的肢体(大腿和足部)运动。我们的方法不需要校准的摄像机或特殊标记即可捕获运动。我们已经对从矢状面收集的不同步态序列进行了测试,并提出了覆盖在原始图像帧上的运动学估计值。我们还通过手动标记视频并将结果与​​视频进行比较来验证我们的方法。

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