Improving Vehicle Detection Accuracy Based on Vehicle Shadow andSuperposition Elimination

Hongjin Zhu, H. Fan, Feiyue Ye, Xiaorong Zhao
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引用次数: 2

Abstract

Vehicle shadow and superposition have a great influence on the accuracy of vehicles detection in traffic video. Many background models have been proposed and improved to deal with detection moving object. This paper presented a method which improves Gaussian mixture model to get adaptive background. The HSV color space was used to eliminate vehicle shadow, it was based on a computational colour space that makes use of our shadow model. Vehicle superposition elimination was discussed based on vehicle contour dilation and erosion method. Experiments were performed to verify that the proposed technique is effective for vehicle detection based traffic surveillance systems. Detection results showed that our approach was robust to widely different background and illuminations.
基于车辆阴影和叠加消除的车辆检测精度提高
在交通视频中,车辆阴影和叠加对车辆检测的准确性影响很大。人们提出并改进了许多处理检测运动目标的背景模型。本文提出了一种改进高斯混合模型以获得自适应背景的方法。使用HSV色彩空间来消除车辆阴影,它是基于利用我们的阴影模型的计算色彩空间。讨论了基于车辆轮廓膨胀和侵蚀法的车辆叠加消除问题。实验验证了该方法在基于车辆检测的交通监控系统中的有效性。检测结果表明,该方法对不同的背景和光照具有较强的鲁棒性。
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