A Novel object Tracking Algorithm Based on mean shift algorithm and SURF

X. Ma, Lulu Li
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引用次数: 0

Abstract

Mean shift algorithm (MSA) is a powerful object tracking technique due to its simplicity and robustness. However, it causes easily the inaccurate tracking when the scene is complex, for example, the object is seriously occluded, the color of the object is similar to that of the background, the background is dynamic, and the camera shakes or moves. Aiming at the above problems, a novel object tracking algorithm based on MSA and SURF (Speeded Up Robust Features) is proposed. Firstly, the object area in the current frame is determined by MSA, and secondly, SURF algorithm is used to match the feature points in the object area of initial frame with those in the object area of current frame, and finally, the coordinates of the center point in the object area of current frame are adjusted according to the matching results. The experimental results on three videos in complex scenes show that the proposed algorithm can track the object more accurately than MSA, and realize the real-time and accurate tracking of video objects in complex scenes.
一种基于均值移位算法和SURF的目标跟踪算法
均值移位算法(MSA)以其简单和鲁棒性成为一种强大的目标跟踪技术。然而,当场景复杂时,如物体被严重遮挡、物体颜色与背景相似、背景是动态的、相机抖动或移动等,容易造成跟踪不准确。针对上述问题,提出了一种基于MSA和SURF(加速鲁棒特征)的目标跟踪算法。首先利用MSA确定当前帧中的目标区域,然后利用SURF算法将初始帧目标区域的特征点与当前帧目标区域的特征点进行匹配,最后根据匹配结果调整当前帧目标区域中心点的坐标。在三个复杂场景下的视频实验结果表明,该算法能够比MSA更准确地跟踪目标,实现了复杂场景下视频目标的实时准确跟踪。
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