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Object tracking using 2DLPP manifold learning

机译:使用2DLPP流形学习的对象跟踪

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The task of visual tracking is to deal with dynamic image sequence. Traditional object representation in tracking algorithms using the image-as-vector subspace learning are easy to result in the problem of the curse of dimensionality and the loss of local structural information from the original image. In this paper, we present a novel online object tracking algorithm by using 2DLPP (Two-Dimensional Local Preserving Projections) manifold learning model. The proposed 2DLPP algorithm adopts a low dimensional eigenspace representation to reflect appearance changes of the target. It can preserve local structural information and directly extract features from image matrices, thereby the method facilitates the tracking task. Furthermore, the new method can update the feature basis recursively, and the computation becomes more efficient for online manifold learning of dynamic object. Finally, we apply the 2DLPP method to visual tracking in the particle filter framework. Experiment results demonstrate the effectiveness of the proposed method in different image sequences where the object undergoes large pose, scale, and lighting changes.
机译:视觉跟踪的任务是处理动态图像序列。使用图像 - 作为向量子空间学习的跟踪算法中的传统对象表示易于导致维度诅咒的问题和来自原始图像的局部结构信息的丢失。在本文中,我们通过使用2DLPP(二维本地保留投影)歧管学习模型提出了一种新的在线对象跟踪算法。所提出的2DLPP算法采用低维成分空间表示,以反映目标的外观变化。它可以保留局部结构信息并直接从图像矩阵提取特征,从而促进跟踪任务。此外,新方法可以递归地更新特征基,并且计算对动态对象的在线歧管学习变得更有效。最后,我们将2DLPP方法应用于粒子过滤器框架中的视觉跟踪。实验结果证明了所提出的方法在不同图像序列中的有效性,其中物体经历大的姿势,尺度和照明变化。

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