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An intelligent vehicle tracking technology based on SURF feature and Mean-shift algorithm

机译:基于SURF特征和均值漂移算法的智能车辆跟踪技术

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In traffic video surveillance system, target-level tracking and feature-level tracking are two important areas for research. Therefore, the combination between them is an interesting question. Mean-shift is a traditional target-level tracking algorithm with no adaptation to vehicle scale and orientation change. In order to solve the problem, algorithm combine SURF (speed-up robust feature) feature with Mean-shift algorithm is proposed in this article. Feature point scale and orientation information is used to make algorithm with scale and orientation adaptability. The tracking model of the vehicle is also updated in the algorithm. Experimental results show that the proposed algorithm provides better tracking result than traditional algorithm of vehicle scale and orientation change. Furthermore, the tracking result is also more accurate.
机译:在交通视频监控系统中,目标级跟踪和特征级跟踪是两个重要的研究领域。因此,它们之间的组合是一个有趣的问题。均值平移是一种传统的目标水平跟踪算法,无法适应车辆的比例和方向变化。为了解决该问题,本文提出了将SURF(加速鲁棒特征)特征与Mean-shift算法相结合的算法。利用特征点比例尺和方向信息来制作具有比例尺和方向适应性的算法。车辆的跟踪模型也会在算法中更新。实验结果表明,与传统的比例尺和方向变化算法相比,该算法具有更好的跟踪效果。此外,跟踪结果也更加准确。

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