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Probability voting and SVM based vehicle detection in complex background airborne traffic video

机译:复杂背景机载交通视频中的概率投票和基于SVM的车辆检测

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摘要

This paper introduces a novel vehicle detection method combined with probability voting based hypothesis generation (HG) and SVM based hypothesis verification (HV) specialized for the complex background airborne traffic video, hi HG stage, a statistic based road area extraction method is applied and the lane marks are eliminated. Remained areas are clustered, and then the canny algorithm is performed to detect edges in clustered areas. A voting strategy is designed to detect rectangle objects in the scene. In HV stage, every possible vehicle area is rotated to align the vehicle along the vertical direction, and the vertical and horizontal gradients of them are calculated. SVM is adopted to classify vehicle and non-vehicle. The proposed method has been applied to several traffic scenes, and the experiment results show it's effective and veracious for the vehicle detection.
机译:本文介绍了一种针对复杂背景机载交通视频的新型车辆检测方法,结合了基于概率投票的假设生成(HG)和基于SVM的假设验证(HV),在HG阶段,采用了基于统计的道路面积提取方法,车道标记被消除。其余区域被聚类,然后执行canny算法以检测聚类区域中的边缘。投票策略旨在检测场景中的矩形对象。在HV阶段,每个可能的车辆区域都会旋转,以使车辆沿垂直方向对齐,并计算它们的垂直和水平坡度。采用支持向量机对车辆和非车辆进行分类。所提出的方法已应用于多种交通场景,实验结果表明该方法对车辆的检测是有效的。

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