School of Information and Engineering, Chang'an University, Xi'an 710064, China.
School of Computer Science and Cyber Engineering, Guangzhou University, Guangzhou 510006, China.
Sensors (Basel). 2023 May 17;23(10):4832. doi: 10.3390/s23104832.
Detecting and classifying vehicles as objects from images and videos is challenging in appearance-based representation, yet plays a significant role in the substantial real-time applications of Intelligent Transportation Systems (ITSs). The rapid development of Deep Learning (DL) has resulted in the computer-vision community demanding efficient, robust, and outstanding services to be built in various fields. This paper covers a wide range of vehicle detection and classification approaches and the application of these in estimating traffic density, real-time targets, toll management and other areas using DL architectures. Moreover, the paper also presents a detailed analysis of DL techniques, benchmark datasets, and preliminaries. A survey of some vital detection and classification applications, namely, vehicle detection and classification and performance, is conducted, with a detailed investigation of the challenges faced. The paper also addresses the promising technological advancements of the last few years.
从图像和视频中检测和分类车辆作为目标,在基于外观的表示中具有挑战性,但在智能交通系统(ITS)的大量实时应用中起着重要作用。深度学习(DL)的快速发展导致计算机视觉社区要求在各个领域构建高效、强大和出色的服务。本文涵盖了广泛的车辆检测和分类方法,以及使用 DL 架构在估计交通密度、实时目标、收费管理等领域中的应用。此外,本文还对 DL 技术、基准数据集和初步工作进行了详细分析。对一些重要的检测和分类应用程序,即车辆检测和分类以及性能进行了调查,并详细研究了所面临的挑战。本文还讨论了过去几年中一些有前途的技术进步。