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Real-Time Bangla License Plate Recognition System using Faster R-CNN and SSD: A Deep Learning Application

机译:使用更快的R-CNN和SSD实时BANGLA牌照识别系统:深度学习应用

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Traffic control and vehicle owner identification become major problems in Bangladesh. Most of the time it is difficult to identify the driver or the owner of the vehicles who violate the traffic rules or do any accidental work on the road. Moreover, it is very time-consuming for a traffic police officer to physically check the license plate of every vehicle. So, an automatic license plate recognition system is a much-needed solution to solve these problems. The existing Bangla license plate recognition systems are mostly based on character segmentation and these methods are not implemented in real-time. In this study, two separate Deep Convolutional Neural Network (DCNN) models are used to identify the license plate and the characters on the license plate from the real-time video streaming. The first CNN model detects the license plate from the live video of a vehicle on the road. Than it crop the license plate area from the video frames. The cropped frame is then fed into the second CNN to detect the characters on that license plate. The characters are detected as individual objects. After detecting all the characters and numbers on the license plate, they are rearranged according to their position on the plate. To train the proposed model total of 292 images are collected used. Moreover, an open-sourced Bangla handwritten character dataset named BanglaLekha-Isolated is also used to train the model with synthetic character data. The trained model is tested using 18 live videos and 6 still image data. Finally, the proposed methodology gains a 100% precision on detecting the license plate, and 91.67% precision for detecting the characters on the license plate for the given test dataset.
机译:交通管制和车主识别成为孟加拉国的主要问题。大多数时候难以识别违反交通规则的车辆的驾驶员或车辆的所有者,或者在道路上做任何意外工作。此外,交警官员在物理检查每辆车的车牌时非常耗时。因此,自动车牌识别系统是解决这些问题的急需解决方案。现有的Bangla牌照识别系统主要基于字符分段,并且这些方法不会实时实现。在本研究中,两个独立的深卷积神经网络(DCNN)模型用于识别许可证板和许可证板上的字符从实时视频流中。第一个CNN模型从路上的车辆直播视频中检测车牌。而不是从视频帧裁剪牌照区域。然后将裁剪帧馈入第二CNN以检测该车牌上的字符。字符被检测为单个对象。在检测牌照上的所有字符和数字后,它们根据其板上的位置重新排列。培训所提出的建议模型,共收集292个图像。此外,还用于突出名为Banglalekha-leccols的开放式孟加拉手写的字符数据集用于培训具有合成字符数据的模型。使用18个现场视频和6个静态图像数据测试训练模型。最后,提出的方法在检测牌照上获得了100%的精度,以及91.67%的精度,用于检测给定测试数据集的车牌上的字符。

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