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On-line learning parts-based representation via incremental orthogonal projective non-negative matrix factorization

机译:通过增量正交投影非负矩阵分解实现基于学习零件的在线表示

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This paper presents a novel incremental orthogonal projective non-negative matrix factorization (IOPNMF) algorithm, which is aimed to learn a parts-based subspace that reveals dynamic data streams. By assuming that the newly added samples only affect basis vectors but do not affect the coefficients of old samples, we propose an objective function for on-line learning and then present a multiplicative update rule to solve it. Compared with other non-negative matrix factorization (NMF) methods, our algorithm can guarantee to learn a linear parts-based subspace in an on-line fashion, which may facilitate some real applications. The facial analysis experiment shows that our IOPNMF method learns parts-based components successfully. In addition, we present an effective tracking method by integrating the IOPNMF method, the idea of sparse representation and the domain information of object tracking. The proposed tracker explicitly takes partial occlusion and mis-alignment into account for appearance model update and object tracking. The experimental results on some challenging image sequences demonstrate the proposed tracking algorithm performs favorably against several state-of-the-art methods.
机译:本文提出了一种新颖的增量正交投影非负矩阵分解(IOPNMF)算法,旨在学习揭示动态数据流的基于零件的子空间。通过假设新添加的样本仅影响基向量而不会影响旧样本的系数,我们提出了一种在线学习的目标函数,然后提出了一个乘法更新规则来对其进行求解。与其他非负矩阵分解(NMF)方法相比,我们的算法可以保证以在线方式学习基于线性零件的子空间,这可能有助于某些实际应用。面部分析实验表明,我们的IOPNMF方法成功学习了基于零件的组件。此外,我们结合了IOPNMF方法,稀疏表示的思想和对象跟踪的域信息,提出了一种有效的跟踪方法。对于外观模型更新和对象跟踪,建议的跟踪器明确考虑了部分遮挡和未对准。在一些具有挑战性的图像序列上的实验结果表明,所提出的跟踪算法在对抗几种最新方法方面表现良好。

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