Zhu Xuqi, Boukhennoufa Issam, Liew Bernard, Gao Cong, Yu Wangyang, McDonald-Maier Klaus D, Zhai Xiaojun
School of Computer Science and Electronic Engineering, University of Essex, Colchester CO4 3SQ, UK.
School of Sport, Rehabilitation, and Exercise Sciences, University of Essex, Colchester CO4 3WA, UK.
Bioengineering (Basel). 2023 May 26;10(6):653. doi: 10.3390/bioengineering10060653.
Gait analysis plays an important role in the fields of healthcare and sports sciences. Conventional gait analysis relies on costly equipment such as optical motion capture cameras and wearable sensors, some of which require trained assessors for data collection and processing. With the recent developments in computer vision and deep neural networks, using monocular RGB cameras for 3D human pose estimation has shown tremendous promise as a cost-effective and efficient solution for clinical gait analysis. In this paper, a markerless human pose technique is developed using motion captured by a consumer monocular camera (800 × 600 pixels and 30 FPS) for clinical gait analysis. The experimental results have shown that the proposed post-processing algorithm significantly improved the original human pose detection model (BlazePose)'s prediction performance compared to the gold-standard gait signals by 10.7% using the MoVi dataset. In addition, the predicted score has an excellent correlation with ground truth ( = 0.99 and = 0.94 + 0.01 regression line), which supports that our approach can be a potential alternative to the conventional marker-based solution to assist the clinical gait assessment.
步态分析在医疗保健和运动科学领域发挥着重要作用。传统的步态分析依赖于昂贵的设备,如光学动作捕捉相机和可穿戴传感器,其中一些设备需要训练有素的评估人员进行数据收集和处理。随着计算机视觉和深度神经网络的最新发展,使用单目RGB相机进行3D人体姿态估计已显示出巨大的潜力,作为临床步态分析的一种经济高效的解决方案。在本文中,开发了一种无标记人体姿态技术,使用消费级单目相机(800×600像素,30帧/秒)捕捉的运动进行临床步态分析。实验结果表明,与金标准步态信号相比,所提出的后处理算法使用MoVi数据集将原始人体姿态检测模型(BlazePose)的预测性能显著提高了10.7%。此外,预测分数与地面真值具有极好的相关性(=0.99,=0.94+0.01回归线),这支持了我们的方法可以成为传统基于标记的解决方案的潜在替代方案,以协助临床步态评估。