实时智能交通系统研究综述

D. Mane, P. Kumbharkar, Nirupama Earan, Komal Patil, Sakshi Bonde, Nilesh J. Uke
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引用次数: 0

摘要

如今,持续监测和提供实时分析对于减少交通事故和道路上车辆超载等行为至关重要。因此,我们回顾了文献中关于车辆检测、识别、识别、速度估计和车牌识别的众多方法和技术。在这项分析中,我们研究了过去十年(从2012年到2022年)发表的42篇文章。基于我们的研究,我们发现深度CNN是车辆分类的最佳方法。这篇综述的动机是上述模型都没有合并成一个单一的模型,所以我们提出了一个全面的列表,所有这些模型可能有助于任何人在这个领域进行研究。因此,在审查了选定的研究出版物后,我们提出了20多个可能用于该领域进行更多研究的数据集。我们还发现了15多个不同的ML模型,用于检测和识别车辆。最后,我们观察到结合机器学习和AI(人工智能)来创建智能交通控制系统是一个很有前途的研究领域。
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A Research Survey on Real-Time Intelligent Traffic System
Nowadays, it is crucial to continuously monitor and provide real-time analysis to reduce traffic-related accidents and practices such as vehicle overloading on the roads daily. As a result, we reviewed the literature's numerous methods and techniques for vehicle detection, recognition, identification, speed estimation, and license plate recognition. In this analysis, we examined 42 articles published in the last ten years, from 2012 to 2022. Based on our research, we found that the Deep CNN is the optimum method for vehicle categorization. The motivation of this review is that none of the aforementioned models are combined into a single model, so we present a comprehensive list of all these models that may be helpful to anyone conducting the study in this area. Therefore, after reviewing the chosen research publications, we propose 20+ datasets that might be used in the field for more research. We also discovered 15+ different ML models used to detect and identify vehicles. Finally, we observed that combining machine learning and AI (Artificial Intelligence) to create intelligent traffic control systems is a promising research area.
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