SONAR, a nursing activity dataset with inertial sensors

Author:

Konak OrhanORCID,Döring Valentin,Fiedler Tobias,Liebe Lucas,Masopust Leander,Postnov Kirill,Sauerwald Franz,Treykorn Felix,Wischmann Alexander,Kalabakov Stefan,Gjoreski Hristijan,Luštrek Mitja,Arnrich BertORCID

Abstract

AbstractAccurate and comprehensive nursing documentation is essential to ensure quality patient care. To streamline this process, we present SONAR, a publicly available dataset of nursing activities recorded using inertial sensors in a nursing home. The dataset includes 14 sensor streams, such as acceleration and angular velocity, and 23 activities recorded by 14 caregivers using five sensors for 61.7 hours. The caregivers wore the sensors as they performed their daily tasks, allowing for continuous monitoring of their activities. We additionally provide machine learning models that recognize the nursing activities given the sensor data. In particular, we present benchmarks for three deep learning model architectures and evaluate their performance using different metrics and sensor locations. Our dataset, which can be used for research on sensor-based human activity recognition in real-world settings, has the potential to improve nursing care by providing valuable insights that can identify areas for improvement, facilitate accurate documentation, and tailor care to specific patient conditions.

Funder

EC | Horizon 2020 Framework Programme

Publisher

Springer Science and Business Media LLC

Subject

Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability

Reference24 articles.

1. Kulsoom, F. et al. A review of machine mearning-based human activity recognition for diverse applications. Neural Computing and Applications 1–36 (2022).

2. De Groot, K., De Veer, A. J., Munster, A. M., Francke, A. L. & Paans, W. Nursing documentation and its relationship with perceived nursing workload: A mixed-methods study among community nurses. BMC Nurs 21, 34 (2022).

3. Yen, P.-Y. et al. Nurses’ time allocation and multitasking of nursing activities: A time motion study. In AMIA Annual Symposium Proceedings, vol. 2018, 1137 (American Medical Informatics Association, 2018).

4. Inoue, S. Activity recognition and future prediction in hospitals. MOBIQUITOUS 2016, 59–65, https://doi.org/10.1145/3004010.3004012 (Association for Computing Machinery, New York, NY, USA, 2016).

5. Inoue, S. et al. Nurse care activity recognition challenge. IEEE Dataport https://doi.org/10.21227/2cvj-bs21 (2019).

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