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用于现实生活中自由行走步态的可穿戴设备实时步态阶段检测

Real-Time Gait Phase Detection on Wearable Devices for Real-World Free-Living Gait.

作者信息

Wu Jiaen, Becsek Barna, Schaer Alessandro, Maurenbrecher Henrik, Chatzipirpiridis George, Ergeneman Olgac, Pane Salvador, Torun Hamdi, Nelson Bradley J

出版信息

IEEE J Biomed Health Inform. 2023 Mar;27(3):1295-1306. doi: 10.1109/JBHI.2022.3228329. Epub 2023 Mar 7.

DOI:10.1109/JBHI.2022.3228329
PMID:37015703
Abstract

Detecting gait phases with wearables unobtrusively and reliably in real-time is important for clinical gait rehabilitation and early diagnosis of neurological diseases. Due to hardware limitations of microcontrollers in wearable devices (e.g., memory and computation power), reliable real-time gait phase detection on the microcontrollers remains a challenge, especially for long-term real-world free-living gait. In this work, a novel algorithm based on a reduced support vector machine (RSVM) and a finite state machine (FSM) is developed to address this. The RSVM is developed by exploiting the cascaded K-means clustering to reduce the model size and computation time of a standard SVM by 88% and a factor of 36, with only minor degradation in gait phase prediction accuracy of around 4%. For each gait phase prediction from the RSVM, the FSM is designed to validate the prediction and correct misclassifications. The developed algorithm is implemented on a microcontroller of a wearable device and its real-time (on the fly) classification performance is evaluated by twenty healthy subjects walking along a predefined real-world route with uncontrolled free-living gait. It shows a promising real-time performance with an accuracy of 91.51%, a sensitivity of 91.70%, and a specificity of 95.77%. The algorithm also demonstrates its robustness with varying walking conditions.

摘要

在临床步态康复和神经疾病的早期诊断中,利用可穿戴设备实时、不干扰且可靠地检测步态阶段非常重要。由于可穿戴设备中微控制器的硬件限制(例如内存和计算能力),在微控制器上进行可靠的实时步态阶段检测仍然是一项挑战,尤其是对于长期现实生活中的自由行走步态。在这项工作中,开发了一种基于简化支持向量机(RSVM)和有限状态机(FSM)的新颖算法来解决这一问题。通过利用级联K均值聚类开发RSVM,将标准支持向量机的模型大小和计算时间分别减少了88%和36倍,而步态阶段预测准确率仅略有下降,约为4%。对于RSVM的每个步态阶段预测,设计FSM来验证预测并纠正错误分类。所开发的算法在可穿戴设备的微控制器上实现,其实时(即时)分类性能由20名健康受试者沿着预定义的现实生活路线以不受控制的自由行走步态进行评估。它显示出有前景的实时性能,准确率为91.51%,灵敏度为91.70%,特异性为95.77%。该算法在不同行走条件下也展示了其鲁棒性。

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