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Visual Tracking Based on Extreme Learning Machine and Sparse Representation

机译:基于极限学习机和稀疏表示的视觉跟踪

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摘要

The existing sparse representation-based visual trackers mostly suffer from both being time consuming and having poor robustness problems. To address these issues, a novel tracking method is presented via combining sparse representation and an emerging learning technique, namely extreme learning machine (ELM). Specifically, visual tracking can be divided into two consecutive processes. Firstly, ELM is utilized to find the optimal separate hyperplane between the target observations and background ones. Thus, the trained ELM classification function is able to remove most of the candidate samples related to background contents efficiently, thereby reducing the total computational cost of the following sparse representation. Secondly, to further combine ELM and sparse representation, the resultant confidence values (i.e., probabilities to be a target) of samples on the ELM classification function are used to construct a new manifold learning constraint term of the sparse representation framework, which tends to achieve robuster results. Moreover, the accelerated proximal gradient method is used for deriving the optimal solution (in matrix form) of the constrained sparse tracking model. Additionally, the matrix form solution allows the candidate samples to be calculated in parallel, thereby leading to a higher efficiency. Experiments demonstrate the effectiveness of the proposed tracker.
机译:现有的基于稀疏表示的视觉跟踪器通常既耗时又缺乏鲁棒性问题。为了解决这些问题,通过结合稀疏表示和新兴的学习技术,即极限学习机(ELM),提出了一种新颖的跟踪方法。具体而言,视觉跟踪可以分为两个连续的过程。首先,利用ELM在目标观测值和背景观测值之间找到最佳的分离超平面。因此,受过训练的ELM分类功能能够有效地删除与背景内容有关的大多数候选样本,从而减少了后续稀疏表示的总计算成本。其次,为了进一步结合ELM和稀疏表示,使用ELM分类函数上样本的结果置信度值(即成为目标的概率)来构造稀疏表示框架的新的流形学习约束项,这往往会达到更可靠的结果。此外,加速近端梯度法用于导出约束稀疏跟踪模型的最优解(矩阵形式)。另外,矩阵形式的解决方案允许并行计算候选样本,从而导致更高的效率。实验证明了所提出的跟踪器的有效性。

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