Study of vision based traffic congestion classification monitoring system (vbtccms)

Image classification is the task of recognising an item or subject according to the class to which it has been allocated in the computer world. Similarly, this thesis discusses the work that was done and how traffic congestion was classified using roadside CCTV video. The goal is to use an architect...

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Bibliographic Details
Main Author: Shamrao, Ramasamy
Format: Undergraduates Project Papers
Language:English
Published: 2022
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/39005/1/EA18033_SHAMRAO_THESIS_V2%20-%20Sham%20Rao.pdf
Description
Summary:Image classification is the task of recognising an item or subject according to the class to which it has been allocated in the computer world. Similarly, this thesis discusses the work that was done and how traffic congestion was classified using roadside CCTV video. The goal is to use an architecture to investigate and classify traffic congestion variables into three categories: low congestion, medium congestion, and excessive congestion. The design entails a study of architecture as well as an application for detecting each class. The study of congestion factor utilising YOLO and Deep Sort, which was constructed using TensorFlow and Keras platform, will be covered in this thesis. The major purpose of this project is to develop a system for classifying traffic congestion on a busy route, with the system being able to classify traffic congestion into three categories: low, medium, and high. The entire categorization process is carried out by the system using vision. TensorFlow is an open source programming framework that provides a variety of architectures as well as an easy-to-use interface for future applications.