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Object tracking based on incremental Bi-2DPCA learning with sparse structure

机译:基于增量式Bi-2DPCA稀疏结构的目标跟踪

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In this paper, we propose a novel object tracking method that can work well in challenging scenarios such as appearance changes, motion blurs, and especially partial occlusions and noise. Our method applies bilateral two-dimensional principal component analysis (Bi-2DPCA) for efficient object modeling and real-time computation requirement. An incremental Bi-2DPCA learning algorithm is proposed for characterizing the appearance changes of newly tracked objects. Also, to account for noise and occlusions, a sparse structure is introduced into our Bi-2DPCA object representation model. With this sparse structure, the appearance of an object can be represented by a linear combination of basis images and an additional noise image. The noise image, which indicates the location of noise and occlusions, can be used to effectively eliminate the influence caused by noise and occlusions and lead to a robust tracker. Instead of the reconstruction error commonly used in eigen-based tracking methods, a more accurate method is adopted for the computation of observation likelihood. The method is based on the energy distribution of coefficient matrix projected by Bi-2DPCA. Experimental results on challenging image sequences demonstrate the effectiveness of the proposed tracking method. (C) 2015 Optical Society of America
机译:在本文中,我们提出了一种新颖的对象跟踪方法,该方法可以很好地应对具有挑战性的场景,例如外观变化,运动模糊,尤其是部分遮挡和噪声。我们的方法将双向二维主成分分析(Bi-2DPCA)用于有效的对象建模和实时计算需求。提出了一种增量式Bi-2DPCA学习算法,用于表征新近跟踪物体的外观变化。此外,为了解决噪声和遮挡问题,我们的Bi-2DPCA对象表示模型引入了稀疏结构。利用这种稀疏结构,可以通过基本图像和附加噪声图像的线性组合来表示对象的外观。指示噪声和遮挡位置的噪声图像可用于有效消除由噪声和遮挡引起的影响,并产生强大的跟踪器。代替通常在基于特征的跟踪方法中使用的重建误差,采用了一种更精确的方法来计算观测似然性。该方法基于Bi-2DPCA投影的系数矩阵的能量分布。具有挑战性的图像序列的实验结果证明了该跟踪方法的有效性。 (C)2015年美国眼镜学会

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