A sustainable competing dynamic - Real-time Bangla license plate detection and recognition system using YOLOv5 and SSD: A deep learning application

IF 1.2 Q2 MATHEMATICS, APPLIED
Md Mehedi Hasan Real, Anamika Zaman Priya, Md Alomgir Hossain, Khandakar Rabbi Ahmed
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Abstract

Abstract In this day and age, the programmed procurement of a tag and acknowledgment assumes a significant part in observing and coordinating vehicles in significant urban communities. It is hard to recognize a driver or proprietor of a vehicle that disregards traffic controls or plays out any incidental movement out and about. It will require a great deal of investment for a cop to review the plate of every vehicle. Subsequently, a mechanized tag acknowledgment framework can tackle these sorts of issues. This is the proposed technique; two Deep Learning calculations are utilized to distinguish the permit number and characters on the tag from the constant picture. The primary YOLOv5 model tracks down the main in the live video of a vehicle out and about. Then, at that point, cut out the area of the permit numbers in the video. The cut casing is then embedded into a second SSD (Single Shot Detection) to identify slugs on that tag. The prepared model acquires a high precision of 96.2% over a sum of 400 picture databases.
基于YOLOv5和SSD的实时孟加拉车牌检测和识别系统:一个深度学习应用程序
在这个时代,标签和确认的程序化采购在观察和协调重要的城市社区车辆中起着重要的作用。很难认出一个无视交通管制或随意移动的司机或车主。对警察来说,检查每辆车的车牌需要大量的投资。随后,一个机械化的标签确认框架可以解决这类问题。这是建议的技术;利用两次深度学习计算将标签上的许可证编号和字符与常量图片区分开来。主要的YOLOv5模型在车辆外出和周围的实时视频中跟踪主要。然后,在这一点上,剪掉视频中许可证号码的区域。然后将切割后的套管嵌入到第二个SSD (Single Shot Detection)中,以识别标签上的段塞。该模型在400个图像数据库的基础上获得了96.2%的精度。
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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来源期刊
CiteScore
3.10
自引率
21.40%
发文量
126
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