IEEE Trans Biomed Eng. 2020 Jun;67(6):1761-1774. doi: 10.1109/TBME.2019.2946682. Epub 2019 Oct 10.
Rapid advances in cost-effective and non-invasive depth sensors, and the development of reliable and real-time 3D skeletal data estimation algorithms, have opened up a new application area in computer vision - statistical analysis of human kinematic data for fast, automated assessment of body movements. These assessments can play important roles in sports, medical diagnosis, physical therapy, elderly monitoring and related applications. This paper develops a comprehensive geometric framework for quantification and statistical evaluation of kinematic features. The key idea is to avoid analysis of individual joints, as is the current paradigm, and represent movements as temporal evolutions, or trajectories, on shape space of full body skeletons. This allows metrics with appropriate invariance properties to be imposed on these trajectories and leads to definitions of higher-level features, such as spatial symmetry (sS), temporal symmetry (tS), action's velocity (Vl) and body's balance (Bl), during performance of an action. These features exploit skeletal symmetries in space and time, and capture motion cadence to naturally quantify motions of individual subjects. The study of these features as functional data allows us to formulate certain hypothesis tests in feature space. This, in turn, leads to validation of existing assumptions and discoveries of new relationships between kinematics and demographic factors, such as age, gender, and athletic training. We use the clinically validated K3Da kinect dataset to illustrate these ideas, and hope these tools will lead to discovery of new relationships between full-body kinematic features and demographic, health, and wellness factors that are clinically relevant.
成本效益高且非侵入式深度传感器的快速发展,以及可靠且实时的 3D 骨骼数据估计算法的发展,为计算机视觉开辟了一个新的应用领域 - 对人体运动学数据进行统计分析,以快速、自动评估身体运动。这些评估在运动、医疗诊断、物理治疗、老年监测和相关应用中可以发挥重要作用。本文开发了一个用于运动学特征定量和统计评估的综合几何框架。其关键思想是避免像当前范例那样分析单个关节,而是将运动表示为完整骨骼形状空间上的时间演化或轨迹。这允许在这些轨迹上施加具有适当不变性属性的度量,并导致在执行动作期间定义更高层次的特征,例如空间对称性 (sS)、时间对称性 (tS)、动作速度 (Vl) 和身体平衡 (Bl)。这些特征利用了空间和时间上的骨骼对称性,并捕捉运动的节奏,以自然量化个体受试者的运动。这些特征作为函数数据进行研究,使我们能够在特征空间中制定某些假设检验。这反过来又验证了现有的假设,并发现了运动学与人口统计学因素(如年龄、性别和运动训练)之间的新关系。我们使用经过临床验证的 K3Da kinect 数据集来说明这些想法,并希望这些工具将有助于发现全身运动特征与临床相关的人口统计学、健康和健康因素之间的新关系。