4.5 Article

A traffic prediction model based on multiple factors

Journal

JOURNAL OF SUPERCOMPUTING
Volume 77, Issue 3, Pages 2928-2960

Publisher

SPRINGER
DOI: 10.1007/s11227-020-03373-0

Keywords

Deep neural network; Graph convolutional network (GCN); Traffic forecast; Spatiotemporal feature

Funding

  1. Shanghai Key Science and Technology Project [19DZ1208903]
  2. National Natural Science Foundation of China [61572325, 60970012]
  3. Ministry of Education Doctoral Fund of Ph.D. Supervisor of China [20113120110008]
  4. Shanghai Key Science and Technology Project in Information Technology Field [14511107902, 16DZ1203603]
  5. Shanghai Leading Academic Discipline Project [XTKX2012]
  6. Shanghai Engineering Research Center Project [GCZX14014, C14001]

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Traffic prediction is crucial for intelligent transportation systems, with the proposed varying spatiotemporal graph-based convolution model showing competitive performance in forecasting traffic safety trends. The model extracts detailed traffic features and external variables from big datasets for real-time processing, demonstrating its effectiveness through extensive experiments on real-world traffic data.
Traffic prediction is a vital part of intelligent transportation systems. The ability of traffic risk prediction is of great significance to prevent traffic accidents and reduce the damages in a proactive way. Because of the complexity, uncertainty and dynamics of spatiotemporal dependence of traffic flow, accurate traffic state prediction becomes a challenging issue. Most neural networks are compute intensive and memory intensive, making them hard to deploy on embedded systems with limited hardware resources. A real-time and high-compressed video object detection structure is proposed. For traffic prediction, many previous studies only explore the utility of a single factor in their prediction and a few multi-factor researches are conducted. Other studies focus on the temporal distribution of traffic flow, ignoring the spatial correlation. And some methods based on graph convolutional networks (GCNs) do not consider the dynamics of graph structure which is a crucial factor to traffic prediction. In this paper, we analyze and process the onboard video captured by the dashboard camera real time. A high accurate deep learning model called varying spatiotemporal graph-based convolution model (VSTGC) is proposed to express the spatiotemporal structures and forecast future traffic safety trends from previous traffic flow. The traffic detailed features (such as vehicle type, braking state, whether changing lanes or not) and external variables (such as weather, time and road condition) are extracted from our big datasets. We conduct extensive experiments to evaluate the VSTGC model on real-world traffic datasets. Experiments on our real traffic dataset show that the proposed model performs competitive performances over the other state-of-the-art approaches.

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