Real-time safety helmet detection using enhanced YOLOv5 object detection.
Personal Protective Equipment (PPE) regulations require construction workers to wear safety helmets to ensure site safety. However, monitoring PPE compliance consistently in fast-paced, dynamic construction environments poses a significant challenge. In response, we developed a sophisticated object...
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my.utm.1078542024-10-08T06:21:38Z http://eprints.utm.my/107854/ Real-time safety helmet detection using enhanced YOLOv5 object detection. Muhamad Zamri, Fatin Najihah Kartiwi, Mira Zulkurnain, Nurul Fariza Md. Yusoff, Nelidya Gunawan, Teddy Surya Levy Olivia Nur, Levy Olivia Nur TK Electrical engineering. Electronics Nuclear engineering Personal Protective Equipment (PPE) regulations require construction workers to wear safety helmets to ensure site safety. However, monitoring PPE compliance consistently in fast-paced, dynamic construction environments poses a significant challenge. In response, we developed a sophisticated object detection system that automates the real-time verification of helmet use, thereby improving safety standards and reducing the likelihood of accidents. Extensive research was conducted to analyze all feasible algorithms that can be implemented in the safety helmet detection system and compare the proposed model with an existing one to ensure the proposed system can give high accuracy and high inference speed. Therefore, YOLOv5 was identified as the ideal choice in terms of accuracy and speed, and it was then enhanced with optimized transfer learning. We began our methodology by pre-training a comprehensive Kaggle dataset before refining the model using Roboflow on a specialized dataset. Using PyTorch and YOLOv5, we conducted exhaustive model training, testing, and evaluation. Our system achieved a lightning-fast inference speed of 39.8 milliseconds and a remarkable 91.4 percent accuracy in identifying helmet compliance. The implementation of such object detection technologies has the potential to significantly increase safety helmet compliance, thereby creating a safer environment for construction workers. 2023-01-03 Conference or Workshop Item PeerReviewed Muhamad Zamri, Fatin Najihah and Kartiwi, Mira and Zulkurnain, Nurul Fariza and Md. Yusoff, Nelidya and Gunawan, Teddy Surya and Levy Olivia Nur, Levy Olivia Nur (2023) Real-time safety helmet detection using enhanced YOLOv5 object detection. In: 9th IEEE International Conference on Smart Instrumentation, Measurement and Applications, ICSIMA 2023, 17 October 2023 - 18 October 2023, Kuala Lumpur, Malaysia. http://dx.doi.org/10.1109/ICSIMA59853.2023.10373456 |
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TK Electrical engineering. Electronics Nuclear engineering Muhamad Zamri, Fatin Najihah Kartiwi, Mira Zulkurnain, Nurul Fariza Md. Yusoff, Nelidya Gunawan, Teddy Surya Levy Olivia Nur, Levy Olivia Nur Real-time safety helmet detection using enhanced YOLOv5 object detection. |
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Personal Protective Equipment (PPE) regulations require construction workers to wear safety helmets to ensure site safety. However, monitoring PPE compliance consistently in fast-paced, dynamic construction environments poses a significant challenge. In response, we developed a sophisticated object detection system that automates the real-time verification of helmet use, thereby improving safety standards and reducing the likelihood of accidents. Extensive research was conducted to analyze all feasible algorithms that can be implemented in the safety helmet detection system and compare the proposed model with an existing one to ensure the proposed system can give high accuracy and high inference speed. Therefore, YOLOv5 was identified as the ideal choice in terms of accuracy and speed, and it was then enhanced with optimized transfer learning. We began our methodology by pre-training a comprehensive Kaggle dataset before refining the model using Roboflow on a specialized dataset. Using PyTorch and YOLOv5, we conducted exhaustive model training, testing, and evaluation. Our system achieved a lightning-fast inference speed of 39.8 milliseconds and a remarkable 91.4 percent accuracy in identifying helmet compliance. The implementation of such object detection technologies has the potential to significantly increase safety helmet compliance, thereby creating a safer environment for construction workers. |
format |
Conference or Workshop Item |
author |
Muhamad Zamri, Fatin Najihah Kartiwi, Mira Zulkurnain, Nurul Fariza Md. Yusoff, Nelidya Gunawan, Teddy Surya Levy Olivia Nur, Levy Olivia Nur |
author_facet |
Muhamad Zamri, Fatin Najihah Kartiwi, Mira Zulkurnain, Nurul Fariza Md. Yusoff, Nelidya Gunawan, Teddy Surya Levy Olivia Nur, Levy Olivia Nur |
author_sort |
Muhamad Zamri, Fatin Najihah |
title |
Real-time safety helmet detection using enhanced YOLOv5 object detection. |
title_short |
Real-time safety helmet detection using enhanced YOLOv5 object detection. |
title_full |
Real-time safety helmet detection using enhanced YOLOv5 object detection. |
title_fullStr |
Real-time safety helmet detection using enhanced YOLOv5 object detection. |
title_full_unstemmed |
Real-time safety helmet detection using enhanced YOLOv5 object detection. |
title_sort |
real-time safety helmet detection using enhanced yolov5 object detection. |
publishDate |
2023 |
url |
http://eprints.utm.my/107854/ http://dx.doi.org/10.1109/ICSIMA59853.2023.10373456 |
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1814043540821377024 |