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Human Pose Estimation based Speed Detection System for Running on Treadmill

机译:基于人体姿态估计的跑步机速度检测系统

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Nowadays, with the improvement of life quality, people gradually realize the importance of mass entertainment and physical fitness. A growing number of people watch sports events and plan to run together in their leisure time, but the existing researches on human running speed detection always ignored the characteristics of the human body. For complex detection, auxiliary equipment needs to be worn during detection, and intelligent detection cannot be achieved. Therefore, we have designed a system that intelligently detects the running speed of people, provides a platform for runners to monitor and share their running status in real-time, and is an auxiliary means for sports events. In this paper, we design a human pose based system that extracts key point information from images to detect the speed with high precision. Additionally, based on this system, we realize intelligent detection while solving the detection of the relatively static position of the human body. Data were collected while the participant was walking/running at different speeds on a treadmill. In the experiment, the key point accuracy of the human pose estimation system based on the Simple Baselines combined with the MPII data set is 89.2%. The model can meet the accuracy requirements of speed detection. In the actual operation process, the system completed the detection task. In the experiment, the average relative error of speed sequences is 4.89%.
机译:如今,随着生活质量的提高,人们逐渐意识到大众娱乐和健身的重要性。越来越多的人观看体育赛事并计划在休闲时间一起跑步,但是现有的关于人体跑步速度检测的研究始终忽略了人体的特征。对于复杂的检测,在检测过程中需要佩戴辅助设备,无法实现智能检测。因此,我们设计了一种系统,可以智能地检测人员的跑步速度,为跑步者提供一个实时监控和共享其跑步状态的平台,并且是体育赛事的辅助手段。在本文中,我们设计了一种基于人体姿势的系统,该系统可从图像中提取关键点信息,从而以高精度检测速度。另外,基于该系统,我们在解决人体相对静态位置的检测的同时实现了智能检测。参与者在跑步机上以不同速度步行/跑步时收集数据。在实验中,基于简单基线和MPII数据集的人体姿态估计系统的关键点准确度为89.2%。该模型可以满足速度检测的精度要求。在实际操作过程中,系统完成了检测任务。在实验中,速度序列的平均相对误差为4.89%。

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