Smart Construction Safety and Alert System with Enhanced AI-Based Optimization
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Publisher
IEEE
Abstract
Construction sites are inherently dangerous environments, often resulting in injuries and losses due to lapses in Personal Protective Equipment (PPE) compliance. This paper presents an AI-driven smart safety system designed to automate real-time monitoring of construction workers using computer vision. A comparative evaluation of multiple object detection models—including YOLOv7, YOLOv8, YOLOv9, YOLOv11 variants, and Faster R-CNN—was conducted to identify the best solution. YOLOv11s was selected for its lightweight architecture, excellent precision (0.908), high mAP(0.847), and efficient inference speed, making it highly suitable for real-time applications. The model was trained on a merged dataset of over 4,000 images across ten PPE categories, using mosaic augmentation and hyperparameter tuning to improve performance and reduce overfitting. The system incorporates a smart alert mechanism that automatically sends email notifications when PPE violations continue for more than 10 seconds, enabling timely intervention. A WebSocket-enabled backend ensures low-latency video streaming and seamless edge device deployment.
Description
uGDX
Keywords
Personal protective equipment, Computational modeling, Surveillance, Object detection, Computer architecture, Real-time systems, Safety, Tuning, Optimization, Videos, PPE Adherence, YOLOv11s, Construction Safety, RealTime Monitoring, Object Detection, AI-Based Optimization, CCTV Surveillance, Hyperparameter Tuning, Mosaic Augmentation, WebSocket, Model Inference, Email Alerts, Safety Automation
Citation
S. Nirkhi, N. Bansal, V. K. Joshi, R. V. Patil, M. Motghare and S. Patil, "Smart Construction Safety and Alert System with Enhanced AI-Based Optimization," 2025 International Conference on Sustainability, Innovation & Technology (ICSIT), Nagpur, India, 2025, pp. 1-6, doi: 10.1109/ICSIT65336.2025.11294907.