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Improvement in Kinect based measurements using anthropometric constraints for rehabilitation

机译:基于Kinect的康复限制基于基于Kinect的测量

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The increasing importance of Kinect as a tool for clinical assessment and rehabilitation is due to its affordability, portability and being a markerless system for human motion capture. However, it is inefficient in terms of accuracy in measuring 3-D body joint locations when compared to marker-based motion capture systems. The measured length of the physically connected joints (bone length) vary with time, along with joint fluctuations during static pose. In this paper, we propose a novel approach to filter the noise of the Kinect 3-D joint coordinates while minimizing the variation in bone length. Kalman is used to filter the data and track the motion, while differential evolutionary (DE) optimization is used to minimize the fluctuations in bone length. A feedback loop is introduced between the Kalman and DE for exchanging the parameters. The algorithm is tested on the data obtained from 26 healthy subjects performing Range of Motion, Single Limb Stance (SLS) exercises and 10 stroke survivors performing SLS. Experimental results show average 41% and 40% improvement in deviation of bone length, which are under motion, for the healthy subjects and stroke patients respectively, outperforming Kalman filter and other existing algorithms like low pass filter, exponential, double exponential filter.
机译:Kinect作为临床评估和康复工具的越来越重要是由于其可负担性,可移植性,并且是人类运动捕获的无价值系统。然而,与基于标记的运动捕获系统相比,在测量3-D体关节位置的准确性方面效率低。物理连接的接头(骨长)的测量长度随时间而变化,以及静态姿势期间的关节波动。在本文中,我们提出了一种新颖的方法来过滤Kinect 3-D关节坐标的噪声,同时最小化骨长的变化。卡尔曼用于过滤数据并跟踪运动,而差分进化(DE)优化用于最小化骨长的波动。在Kalman和DE之间引入了反馈循环,用于交换参数。该算法测试了从执行运动范围的26个健康受试者获得的数据,单肢姿势(SLS)练习和10行程幸存者执行SLS的数据。实验结果表明,对于健康受试者和中风患者,骨长的偏差平均改善平均41 %和40±40倍。分别优于Kalman滤波器和其他现有算法,如低通滤波器,指数,双指数滤波器等现有算法。

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