Smart Traffic Management: Enhancing Urban Mobility through Predictive Analysis and AI-Driven Solutions

Arshathkhan A, Priya. R
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Abstract

In urban environments, the issue of unauthorized parking in designated no-parking zones persists, leading to traffic congestion and safety hazards. inaccurate license plate recognition, License plate (LP) detection is a crucial task for Automatic License Plate Recognition (ALPR) systems. Most existing LP detection networks can detect License plates, but their accuracy suffers when license plates (LPs) are tilted or deformed due to perspective distortion. This leading to difficulties in identifying vehicle owners. To address this challenge, this project present TraceMe, a predictive system utilizing advanced machine learning algorithms. The system employs YOLOv8 for efficient object detection, focusing on identifying vehicles in no-parking zones, and Tesseract OCR for accurate license plate recognition. The extracted license plate information is then processed by a machine learning model trained to predict the owner of the vehicle. The proposed system involves collecting and annotating a diverse dataset, training YOLOv8 and LPRNet model for vehicle number plate detection, utilizing Tesseract OCR for license plate extraction, and implementing a machine learning model for owner identification. Real-time processing and integration with surveillance systems allow for immediate identification of unauthorized parking incidents. The system generates alerts or notifications, aiding law enforcement in enforcing parking regulations.TraceMe not only provides a technological solution to mitigate unauthorized parking but also contributes to improved traffic management and public safety.
智能交通管理:通过预测分析和人工智能驱动的解决方案提升城市流动性
在城市环境中,未经授权在指定的禁停区停车的问题一直存在,导致交通拥堵并带来安全隐患。现有的大多数车牌检测网络都能检测到车牌,但当车牌(LP)因透视变形而倾斜或变形时,其准确性就会受到影响。这给识别车主带来了困难。为了应对这一挑战,本项目提出了 TraceMe,一个利用先进机器学习算法的预测系统。该系统采用 YOLOv8 进行高效的目标检测,重点识别禁止停车区域内的车辆,并采用 Tesseract OCR 进行准确的车牌识别。提取的车牌信息随后由一个经过训练的机器学习模型进行处理,以预测车主。拟议的系统包括收集和注释不同的数据集,训练 YOLOv8 和 LPRNet 模型进行车辆号牌检测,利用 Tesseract OCR 进行车牌提取,以及实施机器学习模型进行车主识别。通过实时处理和与监控系统集成,可以立即识别未经授权的停车事件。TraceMe 不仅为减少违章停车提供了技术解决方案,还有助于改善交通管理和公共安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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