基于混合优化YOLOv3和改进CNN的车牌字符识别自动视频交通监控系统

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Manoj Krishna Bhosale, Shubhangi B. Patil, Babasaheb B Patil
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引用次数: 0

摘要

近年来,随着监控摄像机数量的不断增加,对高效视频编码处理的需求标准发生了变化。此外,超现代的视频编码标准大大提高了视频编码的效率,这是为了收集普通视频而不是监控视频而开发的。各种车辆识别技术在计算机视觉应用和智能交通系统中具有挑战性和前景。在这种情况下,大多数传统技术都是通过边界框描述来识别车辆,因此无法提供车辆的正确位置。此外,在各种实时应用中,车辆在道路上的运动轨迹以及运动估计的位置细节都得到了有力的处理。近年来,智能交通视频监控技术的随机传播在交通监控领域取得了许多进展。该模型的最终目标是利用已开发的深度学习技术设计和增强智能交通视频监控技术。该模型具有通过测量车辆速度和识别车牌来处理视频交通监控的能力。最初的过程被认为是数据采集,在这个过程中采集交通视频数据。此外,车辆检测采用优化后的YOLOv3深度学习分类器,其中参数优化采用新推荐的Coyote optimization Algorithm (COA)和Spider Monkey optimization (SMO)相结合的Modified Coyote Spider Monkey optimization (MCSMO)进行。此外,从每帧开始测量车辆的速度。对于高速车辆,同样的优化YOLOv3用于检测号牌。一旦检测到车牌,车牌字符识别由改进的卷积神经网络(ICNN)进行。因此,有关违反交通规则的车辆的信息可以传达给车主和区域运输办事处(RTO),以采取进一步行动,避免事故的发生。通过实验验证,所设计方法的准确度和精密度分别达到97.53%和96.83%。实验结果表明,与传统模型相比,该方法的性能得到了提高,从而保证了运输系统的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Video Traffic Surveillance System with Number Plate Character Recognition Using Hybrid Optimization-Based YOLOv3 and Improved CNN
Recently, the increased count of surveillance cameras has manipulated the demand criteria for a higher effective video coding process. Moreover, the ultra-modern video coding standards have appreciably enhanced the efficiency of video coding, which has been developed for gathering common videos over surveillance videos. Various vehicle recognition techniques have provided a challenging and promising role in computer vision applications and intelligent transport systems. In this case, most of the conventional techniques have recognized the vehicles along with bounding box depiction and thus failed to provide the proper locations of the vehicles. Moreover, the position details have been vigorous in terms of various real-time applications trajectory of vehicle’s motion on the road as well as movement estimation. Numerous advancements have been offered throughout the years in the traffic surveillance area through the random propagation of intelligent traffic video surveillance techniques. The ultimate goal of this model is to design and enhance intelligent traffic video surveillance techniques by utilizing the developed deep learning techniques. This model has the ability to handle video traffic surveillance by measuring the speed of vehicles and recognizing their number plates. The initial process is considered the data collection, in which the traffic video data is gathered. Furthermore, the vehicle detection is performed by the Optimized YOLOv3 deep learning classifier, in which the parameter optimization is performed by using the newly recommended Modified Coyote Spider Monkey Optimization (MCSMO), which is the combination of Coyote Optimization Algorithm (COA) and Spider Monkey Optimization (SMO). Furthermore, the speed of the vehicles has been measured from each frame. For high-speed vehicles, the same Optimized YOLOv3 is used for detecting the number plates. Once the number plates are detected, plate character recognition is performed by the Improved Convolutional Neural Network (ICNN). Thus, the information about the vehicles, which are violating the traffic rules, can be conveyed to the vehicle owners and Regional Transport Office (RTO) to take further action to avoid accidents. From the experimental validation, the accuracy and precision rate of the designed method achieves 97.53% and 96.83%. Experimental results show that the proposed method achieves enhanced performance when compared to conventional models, thus ensuring the security of the transport system.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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