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Two-wheeler traffic offenses are a well-known fact about the Indian Road scenario. In addition to endangering the offenders, these offenses also endanger other commuters. Two-wheeler traffic violations can take many different forms, such as overloading, triple riding, and helmetless riding. Effective identification and enforcement strategies are necessary for these offenses since they pose a serious risk to public safety. Due to the inadequacy of traditional traffic monitoring and enforcement techniques, advanced technology-based solutions are now required. Deep learning-based systems have demonstrated significant promise in identifying and stopping such infractions in recent years. We propose a two-step deep learning approach that leverages the strengths of pre-trained object detection models to detect two-wheeler riders and specialized helmet classifiers to identify helmet wear status as well as detect number plates. In the first stage, we utilized a highly efficient, robust, and accurate object identification DetectNet (Model 1) framework developed by NVIDIA, and it uses the ResNet18 Convolutional Neural Network (CNN) architecture as part of the Transfer Learning Toolkit known as TAO (Train, Adapt, Optimize). The second stage demands accurate detection of a helmet on the identified rider and extracting numbers from the violator's license plates using the OCR module in real time. We employed YOLOv8 (Model 2), a deep learning-based architecture that has proven effective in several applications involving object detection in real time. It predicts bounding boxes and class probabilities for objects within an image using a single neural network, making it a perfect choice for real-time applications like rider helmet violations detections and number plate processing. Due to a lack of publicly available traffic datasets, we created a custom dataset containing motorcycle rider images captured under complex scenarios for training and validating our models. Experimental analysis shows that our proposed two-step model achieved a promising helmet detection accuracy of 98.56% and a 97.6% number plate detection accuracy of persons not wearing helmets. The major objective of our proposed study is to enforce stringent traffic laws in real-time to decrease rider helmet violations.
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http://dx.doi.org/10.3389/frai.2025.1582257 | DOI Listing |
Inj Prev
August 2025
Harborview Injury Prevention and Research Centre, Harborview Medical Centre, Seattle, Washington, USA.
Background: Motorcycles are a major source of road traffic injuries, with a preponderance of head injuries (HIs), especially among children and young adults. The reported prevalence of HI among children and young adults ranges between 17% and 67%. This study examined the determinants of motorcycle-related HIs among children and youth in northern Ghana.
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August 2025
Mechanical Engineering Department, Kettering University, Flint, Michigan.
Objective: Electric bikes (e-bikes) are increasingly popular in the United States, with studies documenting increased injuries associated with their use. U.S.
View Article and Find Full Text PDFFront Artif Intell
July 2025
Department of Electronics and Communication Engineering, KLS Gogte Institute of Technology, Karnataka, India.
Two-wheeler traffic offenses are a well-known fact about the Indian Road scenario. In addition to endangering the offenders, these offenses also endanger other commuters. Two-wheeler traffic violations can take many different forms, such as overloading, triple riding, and helmetless riding.
View Article and Find Full Text PDFSci Rep
July 2025
Department of Emergency Medicine and Services, Helsinki University Hospital and University of Helsinki, Helsinki, Finland.
Electric scooters (e-scooters) and bicycles are used for similar purposes as transportation. Few studies have shown that e-scooter and bicycle accidents differ in terms of user-profiles and injury characteristics. Still, there is missing information comparing the specific injury types, the overall incidence, and the relative risk of these accidents.
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July 2025
Kenya Medical Research Institute, Department of Biomedical Research, Busia, Kenya.
Introduction: in Busia, motorcycles are a significant contributor to the number of road traffic injuries. Despite the impact they have on the healthcare system, motorcycle accidents have not received much attention due to a lack of local data and inadequate public policy responses in the country. Therefore, this study aimed to identify the risk factors that predict motorcycle accidents.
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