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A deep learning approach to classify sitting and sleep history from raw accelerometry data during simulated driving

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posted on 2024-08-05, 00:46 authored by Georgia TuckwellGeorgia Tuckwell, JA Keal, Charlotte GuptaCharlotte Gupta, Sally FergusonSally Ferguson, JD Kowlessar, Grace VincentGrace Vincent
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.

Funding

Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)

History

Volume

22

Issue

17

Start Page

1

End Page

16

Number of Pages

16

eISSN

1424-8220

ISSN

1424-8220

Publisher

MDPI AG

Publisher License

CC BY

Additional Rights

CC BY 4.0

Language

en

Peer Reviewed

  • Yes

Open Access

  • Yes

Acceptance Date

2022-08-29

Author Research Institute

  • Appleton Institute

Era Eligible

  • Yes

Medium

Electronic

Journal

Sensors

Article Number

6598

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