With urbanization along roads and the ever increasing numbers of vehicles, traffic violations, accidents, and congestion have multiplied immensely, and these are now serious threats to road safety and traffic management systems. Most existing traditional traffic monitoring and enforcement mechanisms are retroactive, taking action only after the oc currence of traffic violations and thus not serving an effective preventive function. This proposal seeks an AI-Based Traffic Violation Risk Predictor that predicts the probability of traffic violations occurring before their actual occurrence to achieve preventive traffic enforcement.The system integrates real-time traffic information and data from various sources such as CCTV, roadside sensors, GPS-enabled vehicles, and past traffic violation databases. This information is then used for analyzing parameters with machine learning and deep learning algorithms: variations in vehicle speed, behavior while lane changing, compliance with signals, traffic density, time trends with respect to the hour of the day, weather conditions, and behavior indicators of drivers. This, followed by risk assessment, refers to any violation in terms of which the system would assign any risk score that is basically the probability of a violation of some traffic rule in a given situation.The system alerts traffic officials when it detects that traffic law violations will occur before their established thresholdBecause the system can forecast upcoming violations and traffic crashes, it will enhance traffic flow efficiency while helping enforcement agencies use their resources more effectively. Clearly, the model proves how artificial intelligence and predictive analytics are bound to change traditional traffic management systems into intelligent solutions driven by data. It is scalable enough to be easily incorporated into the smart city infrastructure and to improve safety on the roads, mitigate traffic congestion, and sustain urban mobility.
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Raymund Natus Raymund natus
Roshan S Roshan s
Nirmal Kumar v Nirmal kumar
Saint Joseph's College
St. Joseph's College New York
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natus et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69e07e242f7e8953b7cbf24b — DOI: https://doi.org/10.5281/zenodo.19564518