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Smart city article details

Title Comprehensive Analysis To Detect Optimal Vehicle Position For Roadside Traffic Surveillance Using Lightweight Contour-Based Cnn
ID_Doc 15300
Authors Sharma N.K.; Rahamatkar S.; Rathore A.S.
Year 2024
Published International Journal of Transport Development and Integration, 8, 1
DOI http://dx.doi.org/10.18280/ijtdi.080119
Abstract In the realm of transport development, the fusion of modern technology and vehicle surveillance in roadside areas becomes indispensable. Traditional surveillance demands continuous monitoring through closed-circuit television cameras. It results in a huge amount of data, which requires high computation. This study delves into the challenges of real-time processing of vehicle surveillance within smart cities with quality data. In addition to a specific focus on monitoring the roadside traffic region despite technological advancements, including target variability, lighting conditions, and occlusion, the manuscript introduces a lightweight contour-based convolutional neural network to address these challenges. The proposed work aims to gain the maximum features from the vehicle via detecting the optimal position and incorporating a Region-Proposal-Network, Region-of-Interest-Align and pooling, Non-Maximum-Suppression, Structural-Similarity-Index, and Peak-Signal-to-Noise-Ratio. The proposed work extracts hierarchical information from a custom video dataset and demonstrates superior performance with an accuracy rate of 97.36% and a minimum loss of 0.0816 in an elapsed time of 1s 159ms. Furthermore, it achieves a validation loss of 0.1506, and a validation accuracy of 96.46%. Additionally, manuscripts illustrate different datasets and models through a systematic literature review. Moreover, the manuscript also illustrates the Smart-City framework and Integrated Traffic Management System architecture. Copyright: © 2024 The authors. This article is published by IIETA and is licensed under the CC BY 4.0 license.
Author Keywords contour-based CNN; real-time vehicle surveillance; scale-invariant feature transform; Smart-City; structural similarity index; transport development; vehicle makes and model recognition


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