Illegally Parked Vehicles Detection Based on Omnidirectional Computer Vision

Yi-ping Tang, Yaoyu Chen
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引用次数: 3

Abstract

At present, vision-based illegally parked vehicles detection faces a range of issues such as narrowness of detection range, low detection precision and robustness. This paper proposed a technique for illegally parked vehicles detection. Firstly, Omni-Directional Vision Sensors (ODVS) are used to access Omni-directional images of the scene. Secondly, a method based on two backgrounds modeled by Gaussian mixture model (GMM) with different learning rate is presented. Through simple arithmetic, it is capable to segment temporarily static vehicles in the scene. This method is computational efficient and robust because of the avoidance of a series of complex operations of merging, splitting, entering, leaving, occlusion, and correspondence which are met in traditional methodology depending on object-tracking. Thirdly, shadow suppression is used to overcome the impact of vehicles' own shadow on the detection precision. Experimental results show that the technique can effectively detect illegally parked vehicles with high precision and robustness.
基于全向计算机视觉的非法停放车辆检测
目前,基于视觉的非法停放车辆检测面临着检测范围窄、检测精度低、鲁棒性低等问题。提出了一种非法停放车辆检测技术。首先,利用全方位视觉传感器(ODVS)获取场景的全方位图像。其次,提出了一种基于不同学习率高斯混合模型(GMM)的两种背景的学习方法。通过简单的算法,能够对场景中暂时静止的车辆进行分割。该方法避免了传统的基于目标跟踪的方法所面临的合并、分割、进入、离开、遮挡、对应等一系列复杂操作,具有计算效率高、鲁棒性好等优点。第三,利用阴影抑制克服车辆自身阴影对检测精度的影响。实验结果表明,该方法能够有效检测违章停放车辆,具有较高的检测精度和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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