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基于闭路电视的城市交通量检测与预测的端到端框架研究

Towards an End-to-End Framework of CCTV-Based Urban Traffic Volume Detection and Prediction.

机构信息

School of Engineering, Newcastle University, Newcastle upon Tyne NE1 7RU, UK.

Urban Observatory, Newcastle University, Newcastle upon Tyne NE1 7RU, UK.

出版信息

Sensors (Basel). 2021 Jan 18;21(2):629. doi: 10.3390/s21020629.

Abstract

Near real-time urban traffic analysis and prediction are paramount for effective intelligent transport systems. Whilst there is a plethora of research on advanced approaches to study traffic recently, only one-third of them has focused on urban arterials. A ready-to-use framework to support decision making in local traffic bureaus using largely available IoT sensors, especially CCTV, is yet to be developed. This study presents an end-to-end urban traffic volume detection and prediction framework using CCTV image series. The framework incorporates a novel Faster R-CNN to generate vehicle counts and quantify traffic conditions. Then it investigates the performance of a statistical-based model (SARIMAX), a machine learning (random forest; RF) and a deep learning (LSTM) model to predict traffic volume 30 min in the future. Tests at six locations with varying traffic conditions under different lengths of past time series are used to train the prediction models. RF and LSTM provided the most accurate predictions, with RF being faster than LSTM. The developed framework has been successfully applied to fill data gaps under adverse weather conditions when data are missing. It can be potentially implemented in near real time at any CCTV location and integrated into an online visualization platform.

摘要

近实时城市交通分析和预测对于有效的智能交通系统至关重要。虽然最近有大量关于先进方法研究交通的研究,但只有三分之一的研究关注城市干道。一个使用大量可用的物联网传感器(尤其是 CCTV)来支持地方交通局决策的即用型框架尚未开发。本研究提出了一种使用 CCTV 图像序列的端到端城市交通量检测和预测框架。该框架采用了一种新颖的 Faster R-CNN 来生成车辆计数并量化交通状况。然后,它研究了基于统计的模型 (SARIMAX)、机器学习 (随机森林;RF) 和深度学习 (LSTM) 模型在未来 30 分钟内预测交通量的性能。在不同长度的过去时间序列下,在具有不同交通条件的六个位置进行测试,以训练预测模型。RF 和 LSTM 提供了最准确的预测,RF 比 LSTM 更快。所开发的框架已成功应用于在数据缺失时填补恶劣天气条件下的数据空白。它可以在任何 CCTV 位置实时实施,并集成到在线可视化平台中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/50af/7830990/c110d3e059cb/sensors-21-00629-g001.jpg

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