AUTOMATIC TOLL COLLECTION SYSTEM USING RFID WITH VEHICLE CLASSIFICATION USING CONVOLUTIONAL NEURAL NETWORK
Authors:
Mrs.K.Gopa Vanitha, Gandham Nandini, Gangishetty Shruti, Bhukya Madhu Kiran,Chapala Sai Ganesh
Page No: 37-43
Abstract:
Toll Vehicle Classification is an important task. Indeed, it has many uses in traffic management and toll collection systems. In this paper, Vinci Auto-roots group Networks (the biggest French Highways concession) are considered, where every year, millions of vehicles are classified in real time. Then, a small decrease in classification performance can have serious economic losses. Therefore, the accuracy and the time complexity become critical for the toll collection system. The current classification algorithm uses the scene features to detect vehicles classes. However, it requires a large labelled dataset, and has a limitation when multiple vehicles are in the scene. Here in, we propose a novel context-aware vehicle classification method that takes profit from the semantic spatial relationship of the objects. The experiments show that our method is performing as accurately as the existing model with significantly lower labelled datasets (74 times smaller). Moreover, the obtained accuracy of the proposed method is 99.97% compared to 99.79% achieved by the current method when using the same training set. We apply Haar Cascade algorithm to detect the vehicle classification.
Description:
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Volume & Issue
Volume-14,ISSUE-5
Keywords
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