Incident and Traffic-Bottleneck Detection Algorithm in High-Resolution Remote Sensing Imagery

Seyed Mostafa Mousavi Kahaki, Md. Jan Nordin, A. Ashtari
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引用次数: 8

Abstract

3 Abstract. One of the most important methods to solve traffic congestion is to detect the incident state of a roadway. This paper describes the development of a method for road traffic monitoring aimed at the acquisition and analysis of remote sensing imagery. We propose a strategy for road extraction, vehicle detection and incident detection from remote sensing imagery using techniques based on neural networks, Radon transform for angle detection and traffic-flow measurements. Traffic-bottleneck detection is another method that is proposed for recognizing incidents in both offline and real-time mode. Traffic flows and incidents are extracted from aerial images of bottleneck zones. The results show that the proposed approach has a reasonable detection performance compared to other methods. The best performance of the learning system was a detection rate of 87% and a false alarm rate of less than 18% on 45 aerial images of roadways. The performance of the traffic-bottleneck detection method had a detection rate of 87.5%.
高分辨率遥感图像中的事件与交通瓶颈检测算法
3抽象。检测道路的事故状态是解决交通拥堵的重要方法之一。本文介绍了一种用于道路交通监测的遥感图像采集和分析方法的发展。我们提出了一种基于神经网络技术的道路提取、车辆检测和遥感图像事件检测策略,Radon变换用于角度检测和交通流量测量。交通瓶颈检测是另一种在离线和实时模式下识别事件的方法。从瓶颈区域的航拍图像中提取交通流量和事故。结果表明,与其他方法相比,该方法具有合理的检测性能。该学习系统的最佳表现是对45张道路航拍图像的检测率为87%,误报率低于18%。该交通瓶颈检测方法的检测率为87.5%。
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