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Smart city article details

Title Intelligent Transportation Activity Recognition Using Deep Belief Network
ID_Doc 32637
Authors Alazeb A.; Khan D.; Jalal A.
Year 2024
Published Interdisciplinary Conference on Electrics and Computer, INTCEC 2024
DOI http://dx.doi.org/10.1109/INTCEC61833.2024.10602906
Abstract Comprehending and analyzing a diverse range of transportation modalities within urban environments is paramount for efficient traffic management and the development of smart cities. This paper explores a novel methodology for Transportation Activity Recognition (TAR) using data derived from GPS sensors, highlighting the potential to discern and categorize distinct modalities such as walking, cycling, and vehicular transport. Utilizing machine learning and advanced feature extraction for GPS sensors, the research processes and analyzes the GPS Microsoft Geo-life dataset, aiming to accurately identify and differentiate between diverse transportation activities and patterns. These activities' effects on urban traffic flow, congestion, and transportation planning are investigated, yielding insightful information that can improve and inform traffic management plans and regulations. The findings emphasize the potential of employing GPS sensors for a detailed and activity-specific analysis of transportation modes, contributing significantly to the evolution and implementation of intelligent and sustainable urban transportation systems. © 2024 IEEE.
Author Keywords deep beliefs network; GPS sensor; traffic activity recognition (TRA); transportation systems


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