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基于人体关节点建议的侧视深度传感器的时空步态测量。

Spatiotemporal Gait Measurement With a Side-View Depth Sensor Using Human Joint Proposals.

出版信息

IEEE J Biomed Health Inform. 2021 May;25(5):1758-1769. doi: 10.1109/JBHI.2020.3024925. Epub 2021 May 11.

DOI:10.1109/JBHI.2020.3024925
PMID:32946402
Abstract

We propose a method for calculating standard spatiotemporal gait parameters from individual human joints with a side-view depth sensor. Clinical walking trials were measured concurrently by a side-view Kinect and a pressure-sensitive walkway, the Zeno Walkway. Multiple joint proposals were generated from depth images by a stochastic predictor based on the Kinect algorithm. The proposals are represented as vertices in a weighted graph, where the weights depend on the expected and measured lengths between body parts. A shortest path through the graph is a set of joints from head to foot. Accurate foot positions are selected by comparing pairs of shortest paths. Stance phases of the feet are detected by examining the motion of the feet over time. The stance phases are used to calculate four gait parameters: stride length, step length, stride width, and stance percentage. A constant frame rate was assumed for the calculation of stance percentage because time stamps were not captured during the experiment. Gait parameters from 52 trials were compared to the ground truth walkway using Bland-Altman analysis and intraclass correlation coefficients. The large spatial parameters had the strongest agreements with the walkway (ICC(2, 1) = 1.00 and 0.98 for stride and step length with normal pace, respectively). The presented system directly calculates gait parameters from individual foot positions while previous side-view systems relied on indirect measures. Using a side-view system allows for tracking walking in both directions with one camera, extending the range in which the subject is in the field of view.

摘要

我们提出了一种从侧视图深度传感器中的个体关节计算标准时空步态参数的方法。临床步行试验同时使用侧视图 Kinect 和压力感应步道 Zeno Walkway 进行测量。多个关节提案通过基于 Kinect 算法的随机预测器从深度图像中生成。这些提案表示为加权图中的顶点,权重取决于身体部位之间的预期和测量长度。通过图的最短路径是从头到脚的一组关节。通过比较最短路径对来选择准确的足部位置。通过检查足部随时间的运动来检测足部的支撑阶段。支撑阶段用于计算四个步态参数:步长、步长、步宽和支撑百分比。由于实验过程中未捕获时间戳,因此假设计算支撑百分比的恒定帧率。使用 Bland-Altman 分析和组内相关系数将 52 次试验的步态参数与地面真实步道进行比较。大的空间参数与步道的一致性最强(正常步速下的步长和步长的 ICC(2,1)分别为 1.00 和 0.98)。所提出的系统直接从个体足部位置计算步态参数,而以前的侧视图系统则依赖于间接测量。使用侧视图系统可以通过一个摄像头跟踪双向行走,从而扩展了受试者在视场中的范围。

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