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A 2D/3D model-based object tracking framework

机译:基于2D / 3D模型的对象跟踪框架

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摘要

This paper presents a robust framework for tracking complex objects in video sequences. Multiple hypothesis tracking (MHT) algorithm reported in (IEEE Trans. Pattern Anal. Mach. Intell. 18(2) (1996)) is modified to accommodate a high level representations (21) edge map, 3D models) of objects for tracking. The framework exploits the advantages of MHT algorithm which is capable of resolving data association/uncertainty and integrates it with object matching techniques to provide a robust behavior while tracking complex objects. To track objects in 2D, a 4D feature is used to represent edge/line segments and are tracked using MHT. In many practical applications 3D models provide more information about the object's pose (i.e., rotation information in the transformation space) which cannot be recovered using 2D edge information. Hence, a 3D model-based object tracking algorithm is also presented. A probabilistic Hausdorff image matching algorithm is incorporated into the framework in order to determine the geometric transformation that best maps the model features onto their corresponding ones in the image plane. 3D model of the object is used to constrain the tracker to operate in a consistent manner. Experimental results on real and synthetic image sequences are presented to demonstrate the efficacy of the proposed framework. (C) 2003 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 35]
机译:本文提出了一个强大的框架,用于跟踪视频序列中的复杂对象。 (IEEE Trans.Pattern Anal.Mach.Intell.18(2)(1996))中报告的多假设跟踪(MHT)算法已进行修改,以适应对象的高级表示形式(21)边缘图,3D模型)进行跟踪。该框架利用了MHT算法的优势,该算法能够解决数据关联/不确定性,并将其与对象匹配技术集成在一起,从而在跟踪复杂对象时提供强大的行为。为了以2D追踪对象,使用4D要素表示边缘/线段并使用MHT进行追踪。在许多实际应用中,3D模型提供了有关对象姿势的更多信息(即变换空间中的旋转信息),而这些信息无法使用2D边缘信息来恢复。因此,还提出了一种基于3D模型的对象跟踪算法。概率Hausdorff图像匹配算法被合并到框架中,以便确定将模型特征最好地映射到图像平面中相应特征的几何变换。对象的3D模型用于约束跟踪器以一致的方式进行操作。提出了真实和合成图像序列的实验结果,以证明所提出框架的有效性。 (C)2003模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:35]

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