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Adaptive Object Tracking by Learning Hybrid Template Online

机译:通过在线学习混合模板进行自适应对象跟踪

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This paper presents an adaptive tracking algorithm by learning hybrid object templates online in video. The templates consist of multiple types of features, each of which describes one specific appearance structure, such as flatness, texture, or edge/corner. Our proposed solution consists of three aspects. First, in order to make the features of different types comparable with each other, a unified statistical measure is defined to select the most informative features to construct the hybrid template. Second, we propose a simple yet powerful generative model for representing objects. This model is characterized by its simplicity since it could be efficiently learnt from the currently observed frames. Last, we present an iterative procedure to learn the object template from the currently observed frames, and to locate every feature of the object template within the observed frames. The former step is referred to as feature pursuit, and the latter step is referred to as feature alignment, both of which are performed over a batch of observations. We fuse the results of feature alignment to locate objects within frames. The proposed solution to object tracking is in essence robust against various challenges, including background clutters, low-resolution, scale changes, and severe occlusions. Extensive experiments are conducted over several publicly available databases and the results with comparisons show that our tracking algorithm clearly outperforms the state-of-the-art methods.
机译:通过在视频中在线学习混合对象模板,提出了一种自适应跟踪算法。模板由多种类型的特征组成,每种特征描述一种特定的外观结构,例如平面度,纹理或边缘/角。我们提出的解决方案包括三个方面。首先,为了使不同类型的特征彼此可比,定义了统一的统计量度以选择最有用的特征来构建混合模板。其次,我们提出了一个简单但功能强大的生成模型来表示对象。该模型的特点是简单,因为可以从当前观察到的帧中有效地学习它。最后,我们提出一个迭代过程,从当前观察到的帧中学习对象模板,并在观察到的帧中找到对象模板的每个特征。前一个步骤称为特征追踪,后一个步骤称为特征对齐,这两个步骤都是在一批观察结果上执行的。我们融合特征对齐的结果以在帧中定位对象。所提出的对象跟踪解决方案在本质上可以抵抗各种挑战,包括背景混乱,分辨率低,缩放比例变化和严重遮挡。在几个公共数据库上进行了广泛的实验,比较结果表明,我们的跟踪算法明显优于最新方法。

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