4.6 Review

Urban Safety: An Image-Processing and Deep-Learning-Based Intelligent Traffic Management and Control System

期刊

SENSORS
卷 21, 期 22, 页码 -

出版社

MDPI
DOI: 10.3390/s21227705

关键词

intelligent traffic management; traffic forecasting; traffic signal control; image processing; deep learning; machine vision

资金

  1. European Regional Development Fund (ERDF), through the Operational Programme for Competitiveness and Internationalization (COMPETE 2020), under the PORTUGAL 2020 Partnership Agreement [POCI-01-0247-FEDER-041435]

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Intelligent Traffic Management and Control (ITMC) is crucial for addressing modern urban traffic challenges, with deep-learning approaches showing promising results in short-term traffic state forecasting and multi-intersection signal control. However, these methods lack robustness in handling unusual scenarios, particularly oversaturated situations, highlighting the need for further research to enhance system performance in real-world scenarios.
With the rapid growth and development of cities, Intelligent Traffic Management and Control (ITMC) is becoming a fundamental component to address the challenges of modern urban traffic management, where a wide range of daily problems need to be addressed in a prompt and expedited manner. Issues such as unpredictable traffic dynamics, resource constraints, and abnormal events pose difficulties to city managers. ITMC aims to increase the efficiency of traffic management by minimizing the odds of traffic problems, by providing real-time traffic state forecasts to better schedule the intersection signal controls. Reliable implementations of ITMC improve the safety of inhabitants and the quality of life, leading to economic growth. In recent years, researchers have proposed different solutions to address specific problems concerning traffic management, ranging from image-processing and deep-learning techniques to forecasting the traffic state and deriving policies to control intersection signals. This review article studies the primary public datasets helpful in developing models to address the identified problems, complemented with a deep analysis of the works related to traffic state forecast and intersection-signal-control models. Our analysis found that deep-learning-based approaches for short-term traffic state forecast and multi-intersection signal control showed reasonable results, but lacked robustness for unusual scenarios, particularly during oversaturated situations, which can be resolved by explicitly addressing these cases, potentially leading to significant improvements of the systems overall. However, there is arguably a long path until these models can be used safely and effectively in real-world scenarios.

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