A Next-Generation Secure Cloud-Based Deep Learning License Plate Recognition for Smart Cities

Rohith Polishetty, M. Roopaei, P. Rad
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引用次数: 56

Abstract

License Plate Recognition System (LPRS) plays a vital role in smart city initiatives such as traffic control, smart parking, toll management and security. In this article, a cloud-based LPRS is addressed in the context of efficiency where accuracy and speed of processing plays a critical role towards its success. Signature-based features technique as a deep convolutional neural network in a cloud platform is proposed for plate localization, character detection and segmentation. Extracting significant features makes the LPRS to adequately recognize the license plate in a challenging situation such as i) congested traffic with multiple plates in the image ii) plate orientation towards brightness, iii) extra information on the plate, iv) distortion due to wear and tear and v) distortion about captured images in bad weather like as hazy images. Furthermore, the deep learning algorithm computed using bare-metal cloud servers with kernels optimized for NVIDIA GPUs, which speed up the training phase of the CNN LPDS algorithm. The experiments and results show the superiority of the performance in both recall and precision and accuracy in comparison with traditional LP detecting systems.
面向智慧城市的下一代安全云深度学习车牌识别技术
车牌识别系统(LPRS)在交通控制、智能停车、收费管理和安全等智慧城市举措中发挥着至关重要的作用。在本文中,将在效率上下文中讨论基于云的LPRS,其中处理的准确性和速度对其成功起着至关重要的作用。提出了一种基于特征的云平台深度卷积神经网络技术,用于车牌定位、特征检测和分割。提取重要特征使LPRS能够在具有挑战性的情况下充分识别车牌,例如i)图像中有多个车牌的拥挤交通ii)车牌朝向亮度,iii)车牌上的额外信息,iv)由于磨损造成的失真以及v)在恶劣天气下捕获的图像失真,如朦胧图像。此外,深度学习算法使用裸机云服务器计算,内核针对NVIDIA gpu进行了优化,加快了CNN lpd算法的训练阶段。实验结果表明,与传统的LP检测系统相比,该系统在查全率、精密度和准确度方面都具有优势。
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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