期刊文献+

融合多特征的禁停区域车辆检测方法

Detection of Vehicle in Illegal Parking Area by Fusing of Multi-Features
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摘要 本文提出一种用于禁停区域车辆违章停放的检测算法。首先确定感兴趣区域,然后利用混合高斯模型建立监控区域背景,采用背景差分法检测出运动对象;再经过Hough椭圆拟合、紧凑性特征提取,以及车轮圆形度等多个特征检测,将驶入禁停区域的车辆检测出来。实验表明,该算法对禁停区域可以达到良好的监测效果,从而有效地保障消防通道等禁停区域的通畅。 An algorithm for vehicle detection in illegal parking area was proposed. Firstly, region of interesting was selected. Secondly, Gaussian Mixture Model was used for background, and moving objects were detected by background subtraction. Then fuse of ellipse fitting, compact features detection and tire circularity detection for vehicle detection. Exercises show that, this algorithm could realize monitoring exactly, and keep illegal parking area smooth.
出处 《科技视界》 2015年第24期75-76,共2页 Science & Technology Vision
基金 国家自然科学基金项目(61162005 61163002) 宁夏自然科学基金项目(NZ14107) 机器人技术与系统国家重点实验室开放研究基金课题(SKLRS-2013-MS-05)
关键词 混合高斯模型 禁停区域 Hough椭圆拟合 紧凑性特征 GMM Illegal parking area Hough ellipse fitting Compact features
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参考文献5

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