STEP TOWARDS INTELLIGENT TRANSPORTATION SYSTEM WITH VEHICLE CLASSIFICATION AND RECOGNITION USING SPEEDED-UP ROBUST FEATURES

Author:

Trivedi Janak,Devi Mandalapu Sarada,Solanki Brijesh

Abstract

<p>Vehicle classification is a crucial task owing to vehicles' diverse and intricate features, such as edges, colors, shadows, corners, and textures. The accurate classification of vehicles enables their detection and identification on roads and facilitates the development of an electronic tollcollection system for smart cities. Furthermore, vehicle classification is useful for traffic signal control strategy. However, achieving accurate vehicle classification poses significant challenges due to the limited processing time for real-time applications, image resolution, illumination variations in the video, and other interferences. This study proposes a method for automated automobile detection, recognition, and classification using statistics derived from approximately 11,000 images. We employ SURF-based detection and different classifiers to categorize vehicles into three groups. The Traffic Management System (TMS) is crucial for studying mobility and smart cities. Our study achieves a high automobile classification rate of 91% with the medium Gaussian Support Vector Machine (SVM) classifier. The paper's main objective is to analyze five object classifiers for vehicle recognition: Decision Tree, Discriminant Analysis, SVM, K-Nearest Neighbor Classifier (KNN), and Ensemble Classifier. In the discussion section, we present the limitations of our work and provide insights into future research directions.</p>

Publisher

Technical Institute of Bijeljina

Subject

General Earth and Planetary Sciences,General Engineering,General Environmental Science

Reference28 articles.

1. Review Paper on Intelligent Traffic Control system using Computer Vision for Smart City”;J.Trivedi;Int. Jour. of Sci. & Engi. Res,2017

2. European plans for the smart city: from theories and rules to logistics test case;FrancescoRusso;European Planning Studies,2016

3. Transport System Models and Big Data: Zoning and Graph Building with Traditional Surveys, FCD and GIS;A.Croce;ISPRS International Journal of Geo-Information

4. Fast Nearest Neighbor Classification Methods for Multispectral Imagery;Perry J.Hardin;The Professional Geographer,1992

5. On Nearest Neighbor Classification Using Adaptive Choice ofk;Anil KGhosh;Journal of Computational and Graphical Statistics,2007

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