Liu Yifan, Liu Xing, Zhu Qianhui, Chen Yuan, Yang Yifei, Xie Haoyu, Wang Yichen, Wang Xingjun
Shenzhen International Graduate School, Tsinghua University, Shenzhen 518055, China.
Huawei Cloud, Shanghai 200121, China.
Bioengineering (Basel). 2024 Aug 8;11(8):806. doi: 10.3390/bioengineering11080806.
The Dynamic Gait Event Identifier (DGEI) introduces a pioneering approach for real-time gait event detection that seamlessly aligns with the needs of embedded system design and optimization. DGEI creates a new standard for gait analysis by combining software and hardware co-design with real-time data analysis, using a combination of first-order difference functions and sliding window techniques. The method is specifically designed to accurately separate and analyze key gait events such as heel strike (HS), toe-off (TO), walking start (WS), and walking pause (WP) from a continuous stream of inertial measurement unit (IMU) signals. The core innovation of DGEI is the application of its dynamic feature extraction strategies, including first-order differential integration with positive/negative windows, weighted sleep time analysis, and adaptive thresholding, which together improve its accuracy in gait segmentation. The experimental results show that the accuracy rate of HS event detection is 97.82%, and the accuracy rate of TO event detection is 99.03%, which is suitable for embedded systems. Validation on a comprehensive dataset of 1550 gait instances shows that DGEI achieves near-perfect alignment with human annotations, with a difference of less than one frame in pulse onset times in 99.2% of the cases.
动态步态事件识别器(DGEI)引入了一种用于实时步态事件检测的开创性方法,该方法与嵌入式系统设计和优化的需求无缝契合。DGEI通过将软硬件协同设计与实时数据分析相结合,运用一阶差分函数和滑动窗口技术的组合,为步态分析创建了一个新的标准。该方法专门设计用于从连续的惯性测量单元(IMU)信号流中准确分离和分析关键步态事件,如足跟触地(HS)、脚趾离地(TO)、行走开始(WS)和行走停顿(WP)。DGEI的核心创新在于其动态特征提取策略的应用,包括正/负窗口的一阶差分积分、加权睡眠时间分析和自适应阈值处理,这些策略共同提高了其在步态分割中的准确性。实验结果表明,HS事件检测的准确率为97.82%,TO事件检测的准确率为99.03%,适用于嵌入式系统。在包含1550个步态实例的综合数据集上的验证表明,DGEI与人工标注几乎完美匹配,在99.2%的情况下,脉冲起始时间的差异小于一帧。