A Computer Vision-Based System for Detecting Safety Helmet Compliance on Construction Sites Using YOLOv5s
DOI:
https://doi.org/10.26439/ciii2025.8657Palabras clave:
Computer vision, convolutional neural networks, deep learning, object detection, safety systemsResumen
The use of safety helmets is a critical measure for protecting construction workers; however, noncompliance remains a recurrent and high-risk issue. This paper presents a real-time computer vision system for helmet detection based on the YOLOv5s algorithm. The model was trained on more than 7 000 annotated images and deployed through a lightweight, scalable pipeline. Experimental results achieved a mean Average Precision (mAP at 0.5) of 91.9% and an optimal F1-score of 0.89 at a confidence threshold of 0.41, with an inference speed of 110 FPS. These findings demonstrate the system’s effectiveness under real-world conditions, providing accurate and fast detection suitable for on-site safety monitoring and contributing to improved compliance in construction environments.
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Derechos de autor 2026 Congreso Internacional de Ingeniería Industrial de la Universidad de Lima

Esta obra está bajo una licencia internacional Creative Commons Atribución 4.0.
