论文标题

BLPNET:一种新的DNN型号和用于自动车牌识别的孟加拉OCR引擎

BLPnet: A new DNN model and Bengali OCR engine for Automatic License Plate Recognition

论文作者

Onim, Md. Saif Hassan, Nyeem, Hussain, Roy, Koushik, Hasan, Mahmudul, Ishmam, Abtahi, Akif, Md. Akiful Hoque, Ovi, Tareque Bashar

论文摘要

自动车牌识别(ALPR)系统的开发已引起了英国车牌的广泛关注。但是,尽管是全球第六大人口,但在孟加拉语国家或各州,ALPR系统无法通过不足的道路安全措施来解决其更令人震惊的交通管理。本文报告了孟加拉语字符的计算高效且合理准确的自动车牌识别(ALPR)系统,该系统具有新的端到端DNN模型,我们称为孟加拉语车牌网络(BLPNET)。提议在模型中使用车辆牌前(VLP)检测车辆区域的级联体系结构,以消除误报,从而导致VLP的检测精度更高。此外,考虑了一组较低的可训练参数,用于降低计算成本,从而使系统更快,更兼容实时应用程序。借助基于计算神经网络(CNN)的新孟加拉OCR发动机和文字映射过程,该模型是字符旋转不变的,并且可以轻松提取,检测和输出车辆的完整车牌号。在实时录像中以每秒17帧(FPS)为单位的模型馈电可能会检测平均误差(MSE)为0.0152的车辆,而平均车牌字符识别精度为95%。尽管与其他模型相比,BLPNetover记录了5%和20%的改善,基于YOLO的ALPR模型和数字检测准确性和时间要求的Tesseract模型分别记录了5%和20%。

The development of the Automatic License Plate Recognition (ALPR) system has received much attention for the English license plate. However, despite being the sixth largest population around the world, no significant progress can be tracked in the Bengali language countries or states for the ALPR system addressing their more alarming traffic management with inadequate road-safety measures. This paper reports a computationally efficient and reasonably accurate Automatic License Plate Recognition (ALPR) system for Bengali characters with a new end-to-end DNN model that we call Bengali License Plate Network(BLPnet). The cascaded architecture for detecting vehicle regions prior to vehicle license plate (VLP) in the model is proposed to eliminate false positives resulting in higher detection accuracy of VLP. Besides, a lower set of trainable parameters is considered for reducing the computational cost making the system faster and more compatible for a real-time application. With a Computational Neural Network (CNN)based new Bengali OCR engine and word-mapping process, the model is characters rotation invariant, and can readily extract, detect and output the complete license plate number of a vehicle. The model feeding with17 frames per second (fps) on real-time video footage can detect a vehicle with the Mean Squared Error (MSE) of 0.0152, and the mean license plate character recognition accuracy of 95%. While compared to the other models, an improvement of 5% and 20% were recorded for the BLPnetover the prominent YOLO-based ALPR model and the Tesseract model for the number-plate detection accuracy and time requirement, respectively.

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