Comparison of Performance of Different Background Subtraction Methods for Detection of Heavy Vehicles

E. Canayaz, Veysel Gokhan Bocekci
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引用次数: 3

Abstract

The growing vehicle numbers in urban and national road networks emerged the need for effective monitoring and management of road traffic. Especially detecting vehicles with break average speed limits rules and trespassing a heavy vehicle is essential to constitute safety traffic flow. In the proposed study, the main goal was detecting heavy vehicles using surveillance videos by using interframe difference, approximate median filtering and Gaussian mixture models for background subtraction and compare their performance. Moreover, after removing the background image from original videos, on binary image morphological opening and blob analysis processes were applied and with minimum blob area of the detected object in a frame, heavy vehicle detection was achieved. Different background subtraction methods produce varying results, and these results were discussed. Our results were consistent with performance comparison studies which indicated the Gaussian mixture model was stable, real-time outdoor tracker in any varying outdoor condition.
不同背景减法在重型车辆检测中的性能比较
城市和国家道路网的车辆数目日益增加,因此需要有效地监测和管理道路交通。特别是对违反平均限速规则的车辆和超重型车辆的检测是构成安全交通流的必要条件。本研究的主要目标是通过帧间差分、近似中值滤波和高斯混合模型进行背景相减来检测监控视频中的重型车辆,并比较它们的性能。在原始视频中去除背景图像后,对二值图像进行形态学打开和斑点分析处理,使被检测物体在一帧内的斑点面积最小,从而实现重型车辆检测。不同的背景减法产生不同的结果,并对这些结果进行了讨论。我们的结果与性能比较研究一致,表明高斯混合模型在任何变化的室外条件下都是稳定的、实时的室外跟踪器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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