一种基于运动显著性的交通监控流检测新算法

Renlong Pan, Xin Lin, Chenquan Huang, Lin Wang
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引用次数: 3

摘要

交通流检测在智能交通系统中起着重要的作用。交通流检测的重点是视频对象的检测和分割。现有的方法大多需要实现复杂的背景建模,相应地增加了计算复杂度和计算成本。为了降低车辆检测的计算成本,提出了一种基于显著性能量图像(SEI)和显著性运动能量图像(SMEI)的车辆自动检测方法。首先,我们设置目标的检测区域,并计算每帧检测区域的图像显著性图。然后计算显著性能量图像(SEI)和显著性运动能量图像(SMEI)。最后,在预先设置的虚拟检测框内,结合sei的垂直投影直方图和二值smei进行车辆流量检测。实验结果表明,该方法实时性好,具有较高的精度和对噪声的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Vehicle Flow Detection Algorithm Based on Motion Saliency for Traffic Surveillance System
Traffic Flow Detection plays an important role in the field of Intelligent Transportation Systems (ITS). Traffic flow detection focuses on the detection and segmentation of video object. The most existing methods need to implement complex background modeling, and accordingly increase the computing complexity and computing cost. In order to reduce the computing cost of the vehicle detection, we propose a new vehicle detection method based on saliency energy image (SEI) and saliency motion energy image (SMEI) for automatic traffic flow detection. First, we set the detecting region of objects, and computing image saliency map of the detecting region for each frame. Then saliency energy image (SEI) and saliency motion energy image (SMEI) are calculated. Finally, the vehicle flow is detected by combining the vertical projection histogram of the SEIs and the binary SMEIs within pre-set virtual detecting box. Experimental results show that our method can work in real-time with a high accuracy and robustness to noise.
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