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.
CITATION STYLE
Berwo, M. A., Khan, A., Fang, Y., Fahim, H., Javaid, S., Mahmood, J., … M.S, S. (2023, May 1). Deep Learning Techniques for Vehicle Detection and Classification from Images/Videos: A Survey. Sensors. MDPI. https://doi.org/10.3390/s23104832
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