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A Comparative Analysis of Deep Learning Approach for Automatic Number Plate Recognition

机译:深度学习自动车牌识别方法的比较分析

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Automatic number plate detection and analysis is a general monitoring strategy used by a large number of city vehicles to enhance traffic management, routing, traffic control, toll collection, and regulation and protection of highway law. ANPR approach can be applied according to different methodologies. This job can be scanned, executed and compared. This proposed work is carried out in real-time application using YOLO v3 for the identification and recognition of plate numbers. In this study, a comparative method for ANPR has been demonstrated. Traditional approaches were focused on contouring, segmentation, edge detection processes which gave less accuracy but here tried to implement YOLO v3 technique that will give more accurate results for Indian license plate detection in real-time.
机译:自动车牌检测和分析是许多城市车辆用来增强交通管理,路线选择,交通控制,收费,公路法规和保护的通用监视策略。可以根据不同的方法应用ANPR方法。可以扫描,执行和比较此作业。这项建议的工作是使用YOLO v3在实时应用中进行的,用于识别和识别车牌号。在这项研究中,已经证明了ANPR的比较方法。传统方法侧重于轮廓,分割,边缘检测过程,这些过程的准确性较低,但此处尝试实施YOLO v3技术,该技术将为印度车牌实时检测提供更准确的结果。

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