Abstract
We present vehicle detection classification using the Convolution Neural Network (CNN) of the deep learning approach. The automatic vehicle classification for traffic surveillance video systems is challenging for the Intelligent Transportation System (ITS) to build a smart city. In this article, three different vehicles: bike, car and truck classification are considered for around 3,000 bikes, 6,000 cars, and 2,000 images of trucks. CNN can automatically absorb and extract different vehicle dataset’s different features without a manual selection of features. The accuracy of CNN is measured in terms of the confidence values of the detected object. The highest confidence value is about 0.99 in the case of the bike category vehicle classification. The automatic vehicle classification supports building an electronic toll collection system and identifying emergency vehicles in the traffic.
Highlights
Vehicle classification, vehicle speed measurements, electronics toll connection system, vehicle counting, and vehicle recognition system are numerous Intelligent Transportation System (ITS) applications
Automatic vehicle classification plays a central role in developing an intelligent system traffic management system
Computer vision-based traffic management is more innovative and efficient compared to human operators
Summary
Vehicle speed measurements, electronics toll connection system, vehicle counting, and vehicle recognition system are numerous ITS applications. The vehicle classification system helps to build an electronic toll collection system and vehicle recognition system in a smart city. Automatic vehicle classification plays a central role in developing an intelligent system traffic management system. The automatic extraction of a vehicle from a surveillance video is a hot research topic for a smart city's traffic organisation. The practice of CCTV camera systems helps in managing traffic control in metropolitan areas. The vehicle classification can be done in two ways: using the human operator and the computer-vision system. Computer vision-based traffic management is more innovative and efficient compared to human operators
Published Version
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