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Smart_Safe: AI-Driven Safety System for Indoor Industrial Environments Using Wearable and Auto-IDopen access

Authors
Stasa, PavelBenes, FilipSvub, JiriHolusa, VeroslavObrusnikova, MiroslavaDulovec, JanHollesch, LukasUnucka, JakubRhee, JongtaeJung, Jin-Woo
Issue Date
2025
Publisher
IEEE
Keywords
Auto-ID technologies; Collision prevention; Real-time risk detection; Smart safety systems; Wearable sensors
Citation
2025 IEEE 22nd International Conference on Mobile Ad-Hoc and Smart Systems (MASS), pp 510 - 511
Pages
2
Indexed
FOREIGN
Journal Title
2025 IEEE 22nd International Conference on Mobile Ad-Hoc and Smart Systems (MASS)
Start Page
510
End Page
511
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/62723
DOI
10.1109/MASS66014.2025.00081
ISSN
2155-6806
2155-6814
Abstract
This poster presents the Smart_Safe system, a modular platform for real-time safety management in indoor industrial environments. The system integrates wearable sensors, Auto-ID technologies (such as RFID and Bluetooth), and AI-based analytics to detect, evaluate, and prevent occupational safety risks. Its core functionality includes real-time tracking of workers, detection of critical events (such as falls or zone violations), and prevention of collisions between people and mobile robots or forklifts. The system is designed to be scalable, interoperable with existing infrastructure, and privacy-respecting through the use of anonymized tracking and local processing. Integration with edge computing and digital twins enables context-aware decision-making and dynamic response to incidents. Smart_Safe supports applications in warehouses, smart factories, and production halls with a focus on high-risk or high-traffic areas. Initial testing demonstrates the feasibility of using hybrid sensor networks and lightweight AI models to ensure workplace safety and optimize movement flows. The poster also outlines the international collaboration between Czech and Korean partners, highlighting the hardware-software co-design process and the future roadmap for deployment. © 2025 IEEE.
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