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Visual Object Tracking Using Structured Sparse PCA-Based Appearance Representation and Online Learning

机译:使用基于稀疏PCA的外观表示和在线学习进行视觉对象跟踪

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摘要

Visual object tracking is a fundamental research area in the field of computer vision and pattern recognition because it can be utilized by various intelligent systems. However, visual object tracking faces various challenging issues because tracking is influenced by illumination change, pose change, partial occlusion and background clutter. Sparse representation-based appearance modeling and dictionary learning that optimize tracking history have been proposed as one possible solution to overcome the problems of visual object tracking. However, there are limitations in representing high dimensional descriptors using the standard sparse representation approach. Therefore, this study proposes a structured sparse principal component analysis to represent the complex appearance descriptors of the target object effectively with a linear combination of a small number of elementary atoms chosen from an over-complete dictionary. Using an online dictionary for learning and updating by selecting similar dictionaries that have high probability makes it possible to track the target object in a variety of environments. Qualitative and quantitative experimental results, including comparison to the current state of the art visual object tracking algorithms, validate that the proposed tracking algorithm performs favorably with changes in the target object and environment for benchmark video sequences.
机译:视觉对象跟踪是计算机视觉和模式识别领域的基础研究领域,因为它可以被各种智能系统利用。但是,视觉对象跟踪面临各种具有挑战性的问题,因为跟踪受照明变化,姿势变化,部分遮挡和背景杂波的影响。已经提出了优化跟踪历史的基于稀疏表示的外观建模和字典学习作为克服视觉对象跟踪问题的一种可能解决方案。但是,使用标准的稀疏表示方法表示高维描述符存在局限性。因此,这项研究提出了一种结构化的稀疏主成分分析方法,以一种有效地表示目标对象的复杂外观描述符的方法,该方法利用从完全完成的字典中选择的少量基本原子的线性组合来有效地表现目标对象。通过选择具有高概率的相似字典来使用在线词典进行学习和更新,可以在各种环境中跟踪目标对象。定性和定量的实验结果,包括与当前最先进的视觉对象跟踪算法的比较,验证了所提出的跟踪算法在基准视频序列的目标对象和环境发生变化时性能良好。

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