Vision-Based Incoming Traffic Estimator Using Deep Neural Network on General Purpose Embedded Hardware

Traffic management is a serious problem in many cities around the world. Even the suburban areas are now experiencing regular traffic congestion. Inappropriate traffic control wastes fuel, time, and the productivity of nations. Though traffic signals are used to improve traffic flow, they often caus...

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Veröffentlicht in:arXiv.org 2023-10
Hauptverfasser: Zoysa, K G, Munasinghe, S R
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description Traffic management is a serious problem in many cities around the world. Even the suburban areas are now experiencing regular traffic congestion. Inappropriate traffic control wastes fuel, time, and the productivity of nations. Though traffic signals are used to improve traffic flow, they often cause problems due to inappropriate or obsolete timing that does not tally with the actual traffic intensity at the intersection. Traffic intensity determination based on statistical methods only gives the average intensity expected at any given time. However, to control traffic accurately, it is required to know the real-time traffic intensity. In this research, image processing and machine learning have been used to estimate actual traffic intensity in real time. General-purpose electronic hardware has been used for in-situ image processing based on the edge-detection method. A deep neural network (DNN) was trained to infer traffic intensity in each image in real time. The trained DNN estimated traffic intensity accurately in 90% of the real-time images during road tests. The electronic system was implemented on a Raspberry Pi single-board computer; hence, it is cost-effective for large-scale deployment.
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subjects Artificial neural networks
Electronic systems
Hardware
Image processing
Machine learning
Neural networks
Real time
Road tests
Statistical methods
Suburban areas
Traffic congestion
Traffic control
Traffic flow
Traffic management
Traffic signals
title Vision-Based Incoming Traffic Estimator Using Deep Neural Network on General Purpose Embedded Hardware
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