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Automatic Extraction of Relevant Road Infrastructure using Connected vehicle data and Deep Learning Model

Authors :
Kojo, Adu-Gyamfi
Raghupathi, Kandiboina
Varsha, Ravichandra-Mouli
Skylar, Knickerbocker
N, Hans Zachary
Hawkins
R, Neal
Anuj, Sharma
Publication Year :
2023

Abstract

In today's rapidly evolving urban landscapes, efficient and accurate mapping of road infrastructure is critical for optimizing transportation systems, enhancing road safety, and improving the overall mobility experience for drivers and commuters. Yet, a formidable bottleneck obstructs progress - the laborious and time-intensive manual identification of intersections. Simply considering the shear number of intersections that need to be identified, and the labor hours required per intersection, the need for an automated solution becomes undeniable. To address this challenge, we propose a novel approach that leverages connected vehicle data and cutting-edge deep learning techniques. By employing geohashing to segment vehicle trajectories and then generating image representations of road segments, we utilize the YOLOv5 (You Only Look Once version 5) algorithm for accurate classification of both straight road segments and intersections. Experimental results demonstrate an impressive overall classification accuracy of 95%, with straight roads achieving a remarkable 97% F1 score and intersections reaching a 90% F1 score. This approach not only saves time and resources but also enables more frequent updates and a comprehensive understanding of the road network. Our research showcases the potential impact on traffic management, urban planning, and autonomous vehicle navigation systems. The fusion of connected vehicle data and deep learning models holds promise for a transformative shift in road infrastructure mapping, propelling us towards a smarter, safer, and more connected transportation ecosystem.<br />Comment: 18 pages, 13 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.05658
Document Type :
Working Paper