系统车牌检测采用改进的YOLOv5探测器

Kathirvel A, Blesso Danny J, Shalem Preetham Gandu, Joe Hinn T O, Roak Kennedy C, Aldrin Immanuel J
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引用次数: 0

摘要

在过去的十年中,道路上的汽车数量有所增加。印度道路上的汽车肯定比印度居民居住的还要多。有必要将罚款程序自动化,通过识别车牌,最大限度地减少车辆超速行驶和超速行驶。提出了一种系统的车牌识别方法。使用基于YOLOv5s的系统对数据集中带注释的图像进行模型训练。该过程分为几个步骤,包括采集、检测、分割,最后是图像中的文本识别。在第一阶段,从每张照片中识别出汽车。下一阶段是从已识别的车辆中识别汽车的车牌。分割后,车牌被裁剪。在最后阶段,从收集到的车牌中识别出字符。系统使用YOLOv5进行车牌检测,使用Keras进行字符识别。从号牌中检索字符并输入到excel电子表格中。印度车牌的图像被用来评估模型的性能。汽车检测、车牌识别和字符识别的准确率分别为97.6%、98.2%和99.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic Number Plate detection using improved YOLOv5 detector
The count of automobiles has risen over the past decade on the road. There must be more automobiles on Indian roadways than the citizens living in. It is necessary to automate the fine-collecting procedure which minimizes vehicles from driving too fast and exceeding the posted speed limit by identifying the license plate. In this paper, a systematic number plate recognition (SNPR) methodology was proposed. A system based on YOLOv5s is used for training the model with annotated images in the dataset. The process was divided into several steps, comprising acquisition, detection, segmentation, and finally text recognition in an image. The automobile is recognised from each photograph in the first stage. The next stage is to identify the automobiles' license plates from the identified cars. After the segmentation, the license plates are cropped. The characters are recognised in the last phase from the collected number plates. YOLOv5 is used by the system for number plate detection and Keras for character recognition. The characters from a number plate are retrieved and entered into an excel spreadsheet. Images of Indian license plates are used to evaluate the model's performance. The accuracy for automobile detection, number plate identification and character recognition are 97.6%, 98.2%, and 99.1%.
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