论文标题

步态事件通过基于混合CNN-RNN的深度学习模型通过单个腰部可穿戴传感器进行预测

Gait Events Prediction using Hybrid CNN-RNN-based Deep Learning models through a Single Waist-worn Wearable Sensor

论文作者

Arshad, Muhammad Zeeshan, Jamsrandorj, Ankhzaya, Kim, Jinwook, Mun, Kyung-Ryoul

论文摘要

老年步态是有关其身心健康状况的丰富信息的来源。作为下半身部位上多个传感器的替代方案,骨盆上的单个传感器具有位置优势和丰富的信息可获取。这项研究旨在探索一种在腰部和深度学习模型上使用单个传感器在老年人中提高步态事件检测准确性的方法。数据是从配备三个IMU传感器的老年人那里收集的。该输入仅从腰部传感器中获取,用于训练16个深度学习模型,包括CNN,RNN和CNN-RNN杂种,无论有或没有双向和注意机制。从IMU脚传感器中提取了地面图。 CNN-Bigru-Att模型在$ \ pm $ \ pm $ 6TS($ \ pm $ 6ms)和$ \ pm $ 1TS($ \ pm $ 1ms)上实现了相当高的精度为99.73%和93.89%。该模型从先前的研究探索步态事件检测的前进,在其预测错误方面显示出了很大的改善,其HS为6.239ms和5.24ms和5.24ms,以及在$ \ pm $ 1TS的公差窗口中分别为事件。结果表明,使用CNN-RNN混合模型具有注意力和双向机制有望使用单个腰围传感器进行准确的步态事件检测。这项研究可能有助于减轻步态检测的负担,并增加其在未来可穿戴设备中的适用性,该设备可用于远程健康监测(RHM)或基于诊断的诊断。

Elderly gait is a source of rich information about their physical and mental health condition. As an alternative to the multiple sensors on the lower body parts, a single sensor on the pelvis has a positional advantage and an abundance of information acquirable. This study aimed to explore a way of improving the accuracy of gait event detection in the elderly using a single sensor on the waist and deep learning models. Data was gathered from elderly subjects equipped with three IMU sensors while they walked. The input was taken only from the waist sensor was used to train 16 deep-learning models including CNN, RNN, and CNN-RNN hybrid with or without the Bidirectional and Attention mechanism. The groundtruth was extracted from foot IMU sensors. Fairly high accuracy of 99.73% and 93.89% was achieved by the CNN-BiGRU-Att model at the tolerance window of $\pm$6TS ($\pm$6ms) and $\pm$1TS ($\pm$1ms) respectively. Advancing from the previous studies exploring gait event detection, the model showed a great improvement in terms of its prediction error having an MAE of 6.239ms and 5.24ms for HS and TO events respectively at the tolerance window of $\pm$1TS. The results showed that the use of CNN-RNN hybrid models with Attention and Bidirectional mechanisms is promising for accurate gait event detection using a single waist sensor. The study can contribute to reducing the burden of gait detection and increase its applicability in future wearable devices that can be used for remote health monitoring (RHM) or diagnosis based thereon.

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