Ana Rita Coias, Min Hun Lee, Alexandre Bernardino, Asim Smailagic
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引用次数: 0
摘要
基于运动评估的计算机系统是支持中风幸存者自主康复训练的有前景的解决方案。在这方面,研究人员一直在努力实现主要适合家庭使用的引人入胜的低成本解决方案。为了实现一个技术设置最少的系统,我们比较了Microsoft Kinect、OpenPose和MediaPipe骨骼跟踪方法对中风后上肢运动质量的评估。我们使用15名中风幸存者的数据集,确定分类模型是否使用OpenPose和MediaPipe数据相对于Kinect准确评估运动表现。我们计算均方根误差来确定轨迹和运动学变量的对齐。MediaPipe World Landmarks显示与Kinect高度一致,这是一种潜在的替代方法。
Skeleton Tracking Solutions for a Low-Cost Stroke Rehabilitation Support System.
Computer systems based on motion assessment are promising solutions to support stroke survivors' autonomous rehabilitation exercises. In this regard, researchers keep trying to achieve engaging and low-cost solutions suitable mainly for home use. Aiming to achieve a system with a minimal technical setup, we compare Microsoft Kinect, OpenPose, and MediaPipe skeleton tracking approaches for upper extremity quality of movement assessment after stroke. We determine if classification models assess accurately exercise performance with OpenPose and MediaPipe data against Kinect, using a dataset of 15 stroke survivors. We compute Root Mean Squared Error to determine the alignment of trajectories and kinematic variables. MediaPipe World Landmarks revealed high alignment with Kinect, revealing to be a potential alternative method.