斑点鬣狗优化器与深度学习支持车辆计数和分类模型的智能交通系统

IF 1 4区 数学 Q1 MATHEMATICS
Manal Abdullah Alohali, M. Maashi, Raji Faqih, Hany Mahgoub, Abdullah Mohamed, Mohammed Assiri, Suhanda Drar
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引用次数: 0

摘要

交通监控系统用于收集和监控道路网络的交通状况数据。这些数据在智能交通系统(its)的各种应用中起着至关重要的作用。在交通监控中,如何实现准确的车辆检测和从交通视频中统计车辆是一个挑战。最显著的困难包括实时系统操作的精确分类,识别车辆在交通流中的位置,以及在阻碍车辆跟踪过程的完全闭塞的情况下运行。传统的视频相关车辆检测技术,如光流、背景差和帧差等,在效率和精度上都有一定的局限性。因此,本研究提出了基于深度学习的车辆计数与分类(SHODL-VCC)模型的斑点鬣狗优化器。提出的SHODL-VCC技术的目的在于对交通监控中的车辆进行准确的计数和分类。为了实现这一目标,提出的SHODL-VCC技术遵循两个阶段的过程,包括车辆检测和车辆分类。首先,本文提出的SHODL-VCC技术采用了RetinaNet目标检测器来识别车辆。然后,利用深度小波自编码器模型对检测到的车辆进行分类。为了提高车辆检测性能,利用斑点鬣狗优化算法作为超参数优化器,大大提高了车辆检测率。采用不同的数据库对所提出的SHODL-VCC技术进行了实验验证。对比结果表明,与最近的深度学习方法相比,SHODL-VCC技术具有很好的车辆分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spotted hyena optimizer with deep learning enabled vehicle counting and classification model for intelligent transportation systems
Traffic surveillance systems are utilized to collect and monitor the traffic condition data of the road networks. This data plays a crucial role in a variety of applications of the Intelligent Transportation Systems (ITSs). In traffic surveillance, it is challenging to achieve accurate vehicle detection and count the vehicles from traffic videos. The most notable difficulties include real-time system operations for precise classification, identification of the vehicles' location in traffic flows and functioning around total occlusions that hamper the vehicle tracking process. Conventional video-related vehicle detection techniques such as optical flow, background subtraction and frame difference have certain limitations in terms of efficiency or accuracy. Therefore, the current study proposes to design the spotted hyena optimizer with deep learning-enabled vehicle counting and classification (SHODL-VCC) model for the ITSs. The aim of the proposed SHODL-VCC technique lies in accurate counting and classification of the vehicles in traffic surveillance. To achieve this, the proposed SHODL-VCC technique follows a two-stage process that includes vehicle detection and vehicle classification. Primarily, the presented SHODL-VCC technique employs the RetinaNet object detector to identify the vehicles. Next, the detected vehicles are classified into different class labels using the deep wavelet auto-encoder model. To enhance the vehicle detection performance, the spotted hyena optimizer algorithm is exploited as a hyperparameter optimizer, which considerably enhances the vehicle detection rate. The proposed SHODL-VCC technique was experimentally validated using different databases. The comparative outcomes demonstrate the promising vehicle classification performance of the SHODL-VCC technique in comparison with recent deep learning approaches.
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来源期刊
CiteScore
1.30
自引率
12.50%
发文量
170
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