Real-Time AI-Driven Fall Detection Method for Occupational Health and Safety

Author:

Danilenka Anastasiya12ORCID,Sowiński Piotr12ORCID,Rachwał Kajetan12ORCID,Bogacka Karolina12ORCID,Dąbrowska Anna3ORCID,Kobus Monika3ORCID,Baszczyński Krzysztof3ORCID,Okrasa Małgorzata3ORCID,Olczak Witold4,Dymarski Piotr4ORCID,Lacalle Ignacio5ORCID,Ganzha Maria12ORCID,Paprzycki Marcin1ORCID

Affiliation:

1. Systems Research Institute, Polish Academy of Sciences, ul. Newelska 6, 01-447 Warsaw, Poland

2. Faculty of Mathematics and Information Science, Warsaw University of Technology, ul. Koszykowa 75, 00-662 Warsaw, Poland

3. Department of Personal Protective Equipment, Central Institute for Labour Protection—National Research Institute, ul. Wierzbowa 48, 90-133 Lodz, Poland

4. Mostostal Warszawa SA, ul. Konstruktorska 12A, 02-673 Warsaw, Poland

5. Communications Department, Universitat Politècnica de València, Camí de Vera, s/n, 46022 Valencia, Spain

Abstract

Fall accidents in industrial and construction environments require an immediate reaction, to provide first aid. Shortening the time between the fall and the relevant personnel being notified can significantly improve the safety and health of workers. Therefore, in this work, an IoT system for real-time fall detection is proposed, using the ASSIST-IoT reference architecture. Empowered with a machine learning model, the system can detect fall accidents and swiftly notify the occupational health and safety manager. To train the model, a novel multimodal fall detection dataset was collected from ten human participants and an anthropomorphic dummy, covering multiple types of fall, including falls from a height. The dataset includes absolute location and acceleration measurements from several IoT devices. Furthermore, a lightweight long short-term memory model is proposed for fall detection, capable of operating in an IoT environment with limited network bandwidth and hardware resources. The accuracy and F1-score of the model on the collected dataset were shown to exceed 0.95 and 0.9, respectively. The collected multimodal dataset was published under an open license, to facilitate future research on fall detection methods in occupational health and safety.

Funder

European Commission

Centre for Priority Research Area Artificial Intelligence and Robotics of Warsaw University of Technology

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference61 articles.

1. European Commission, and Eurostat (2023, July 01). Accidents at Work Statistics. Available online: https://ec.europa.eu/eurostat/statistics-explained/index.php?title=Accidents_at_work_statistics.

2. European Commission, and Eurostat (2023, July 01). Accidents at Work by Sex, Age, Severity, NACE Rev. 2 Activity and Deviation. Available online: https://ec.europa.eu/eurostat/databrowser/product/view/HSW_PH3_06.

3. Costs of occupational injury and illness across industries;Paul;Scand. J. Work. Environ. Health,2004

4. Battaglini, M., Andriescu, M., Spyridopoulos, K., and Olausson, N. (2022). Smart Digital Monitoring Systems for Occupational Safety and Health: Workplace Resources for Design, Implementation and Use, European Agency for Safety and Health at Work (EU-OSHA). Technical Report.

5. Eeckelaert, L., Graveling, R., and Kuhl, K. (2023, September 07). Construction Safety Risks and Prevention. Available online: https://oshwiki.osha.europa.eu/en/themes/construction-safety-risks-and-prevention.

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