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An approach to automatic object tracking system by combination of SIFT and RANSAC with mean shift and KLT

机译:SIFT和RANSAC结合均值漂移和KLT的自动目标跟踪系统

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摘要

Object recognition and tracking are important and challenging tasks in many computer vision applications. Difficulties in object recognition arise due to occlusion, clutter and geometric transformations present between pair of images or frames. Challenges in tracking include ability to deal with abrupt object motion, nonrigid object structures, change in appearance patterns of scene and object, occlusions present and camera motion. To deal with these challenges, we have explored the effectiveness of SIFT for feature extraction and RANSAC for homography estimation in object recognition. This makes system invariant to geometric transformations, illumination variations, partial occlusions and clutter. This automatic object recognition approach is used to automatically detect the object in first frame of video and then it is tracked in subsequent frames. Object tracking is implemented by Mean Shift Algorithm and KLT tracker. These algorithms have ability to handle partial occlusion and clutter. Combination of Mean shift and KLT with SIFT and RANSAC makes the system automatic.
机译:在许多计算机视觉应用中,对象识别和跟踪都是重要且具有挑战性的任务。由于在成对的图像或帧之间存在遮挡,杂波和几何变换,因此出现了物体识别的困难。跟踪方面的挑战包括处理突然的物体运动,非刚性物体结构,场景和物体的外观模式变化,存在的遮挡以及相机运动的能力。为了应对这些挑战,我们探索了SIFT在特征识别中的有效性以及RANSAC在物体识别中的单应性估计的有效性。这使得系统对于几何变换,照度变化,部分遮挡和混乱不可变。这种自动对象识别方法用于自动检测视频的第一帧中的对象,然后在后续帧中对其进行跟踪。通过均值漂移算法和KLT跟踪器实现对象跟踪。这些算法具有处理部分遮挡和杂波的能力。均值平移和KLT与SIFT和RANSAC的组合使系统自动化。

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