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基于深度学习的模拟驾驶过程中原始加速度计数据的坐姿和睡眠历史分类方法。

A Deep Learning Approach to Classify Sitting and Sleep History from Raw Accelerometry Data during Simulated Driving.

机构信息

School of Health, Medical and Applied Sciences, Central Queensland University, Adelaide 5001, Australia.

School of Physical Sciences, The University of Adelaide, Adelaide 5005, Australia.

出版信息

Sensors (Basel). 2022 Sep 1;22(17):6598. doi: 10.3390/s22176598.

Abstract

Prolonged sitting and inadequate sleep can impact driving performance. Therefore, objective knowledge of a driver's recent sitting and sleep history could help reduce safety risks. This study aimed to apply deep learning to raw accelerometry data collected during a simulated driving task to classify recent sitting and sleep history. Participants (n = 84, Mean ± SD age = 23.5 ± 4.8, 49% Female) completed a seven-day laboratory study. Raw accelerometry data were collected from a thigh-worn accelerometer during a 20-min simulated drive (8:10 h and 17:30 h each day). Two convolutional neural networks (CNNs; ResNet-18 and DixonNet) were trained to classify accelerometry data into four classes (sitting or breaking up sitting and 9-h or 5-h sleep). Accuracy was determined using five-fold cross-validation. ResNet-18 produced higher accuracy scores: 88.6 ± 1.3% for activity (compared to 77.2 ± 2.6% from DixonNet) and 88.6 ± 1.1% for sleep history (compared to 75.2 ± 2.6% from DixonNet). Class activation mapping revealed distinct patterns of movement and postural changes between classes. Findings demonstrate the suitability of CNNs in classifying sitting and sleep history using thigh-worn accelerometer data collected during a simulated drive. This approach has implications for the identification of drivers at risk of fatigue-related impairment.

摘要

长时间久坐和睡眠不足会影响驾驶表现。因此,客观了解驾驶员近期的久坐和睡眠历史可以帮助降低安全风险。本研究旨在将深度学习应用于在模拟驾驶任务中收集的原始加速度计数据,以分类近期的坐姿和睡眠历史。参与者(n=84,平均年龄±标准差为 23.5±4.8,女性占 49%)完成了为期七天的实验室研究。在 20 分钟的模拟驾驶过程中(每天 8:10 小时和 17:30 小时),从大腿佩戴的加速度计中采集原始加速度计数据。训练了两个卷积神经网络(CNN;ResNet-18 和 DixonNet),以将加速度计数据分类为四个类别(坐姿或打破坐姿和 9 小时或 5 小时睡眠)。使用五折交叉验证确定准确性。ResNet-18 产生了更高的准确率:活动为 88.6±1.3%(与 DixonNet 的 77.2±2.6%相比),睡眠历史为 88.6±1.1%(与 DixonNet 的 75.2±2.6%相比)。类激活映射揭示了类之间运动和姿势变化的明显模式。研究结果表明,使用在模拟驾驶过程中收集的大腿佩戴加速度计数据,CNN 适合分类坐姿和睡眠历史。这种方法对识别易受与疲劳相关的损伤的驾驶员具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fec6/9460180/fe10f7687845/sensors-22-06598-g001.jpg

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