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Title: TrafficNet: A Deep Neural Network for Traffic Monitoring Using Distributed Fiber-Optic Sensing
Accession Number: 01764197
Record Type: Component
Abstract: Distributed Fiber-Optic Sensing (DFOS) for wide-area traffic monitoring is an emerging field with far-reaching applications like congestion and trajectories detection, travel time estimation, vehicle counting etc. The most captivating aspect of DFOS is that a single sensing and processing unit can monitor traffic flow in real-time for more than 80 km while utilizing existing fiber infrastructures laid alongside roadways. This work presents a novel algorithm named TrafficNet, a deep neural network for effective extraction of traffic flow patterns using DFOS systems. Proposed TrafficNet is capable of denoising DFOS data and identifying the essential components corresponding to each traversing vehicle. TrafficNet is the first of its kind neural network developed to monitor traffic by detecting vehicle trajectories and estimating various traffic flow properties using DFOS. Experimental results indicate that TrafficNet achieves 96% accuracy for estimation of average traffic speeds as compared to existing inductive loop detectors.
Supplemental Notes: This paper was sponsored by TRB committee AED50 Standing Committee on Artificial Intelligence and Advanced Computing Applications.
Report/Paper Numbers: TRBAM-21-01128
Language: English
Corporate Authors: Transportation Research BoardAuthors: Narisetty, ChaitanyaHino, TomoyukiHuang, Ming-FangSakurai, HitoshiAndo, ToruAzuma, ShinichiroPagination: 13p
Publication Date: 2021
Conference:
Transportation Research Board 100th Annual Meeting
Location:
Washington DC, United States Media Type: Digital/other
Features: Figures; Maps; References
(20)
; Tables
TRT Terms: Subject Areas: Highways; Operations and Traffic Management; Safety and Human Factors
Source Data: Transportation Research Board Annual Meeting 2021 Paper #TRBAM-21-01128
Files: TRIS, TRB, ATRI
Created Date: Dec 23 2020 11:22AM
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