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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Object tracking in image sequences using point features
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Object tracking in image sequences using point features

机译:使用点特征跟踪图像序列中的对象

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摘要

This paper presents an object tracking technique based on the Bayesian multiple hypothesis tracking (MHT) approach. Two algorithms, both based on the MHT technique are combined to generate an object tracker. The first MHT algorithm is employed for contour segmentation. The segmentation of contours is based on an edge map. The segmented contours are then merged to form recognisable objects. The second MHT algorithm is used in the temporal tracking of a selected object from the initial frame. An object is represented by key feature points that are extracted from it. The key points (mostly corner points) are detected using information obtained from the edge map. These key points are then tracked through the sequence. To confirm the correctness of the tracked key points, the location of the key points on the trajectory are verified against the segmented object identified in each frame. If an acceptable number of key-points lie on or near the contour of the object in a particular frame (n-th frame), we conclude that the selected object has been tracked (identified) successfully in frame n. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于贝叶斯多重假设跟踪(MHT)方法的对象跟踪技术。两种均基于MHT技术的算法被组合以生成对象跟踪器。第一种MHT算法用于轮廓分割。等高线的分割基于边缘图。然后将分割的轮廓合并以形成可识别的对象。第二种MHT算法用于从初始帧中对选定对象进行时间跟踪。对象由从对象中提取的关键特征点表示。使用从边缘图获得的信息来检测关键点(主要是拐角点)。然后,在整个序列中跟踪这些关键点。为了确认所跟踪关键点的正确性,针对每个帧中标识的分割对象,验证关键点在轨迹上的位置。如果在特定帧(第n帧)中对象的轮廓上或附近有可接受数量的关键点,则可以得出结论,在帧n中已成功跟踪(标识)了所选对象。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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