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An Improved Fast Compressive Tracking Algorithm Based on Online Random Forest Classifier

机译:一种基于在线随机森林分类器的改进的快速压缩跟踪算法

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The fast compressive tracking (FCT) algorithm is a simple and efficient algorithm, which is proposed in recent years. But, it is difficult to deal with the factors such as occlusion, appearance changes, pose variation, etc in processing. The reasons are that, Firstly, even if the naive Bayes classifier is fast in training, it is not robust concerning the noise. Secondly, the parameters are required to vary with the unique environment for accurate tracking. In this paper, we propose an improved fast compressive tracking algorithm based on online random forest (FCT-ORF) for robust visual tracking. Firstly, we combine ideas with the adaptive compressive sensing theory regarding the weighted random projection to exploit both local and discriminative information of the object. The second reason is the online random forest classifier for online tracking which is demonstrated with more robust to the noise adaptively and high computational efficiency. The experimental results show that the algorithm we have proposed has a better performance in the field of occlusion, appearance changes, and pose variation than the fast compressive tracking algorithm’s contribution.Key words: fast compressive tracking / naive Byes classifier / online / random forest
机译:快速压缩跟踪(FCT)算法是近年来提出的一种简单高效的算法。但是,在处理中难以处理诸如遮挡,外观变化,姿势变化等因素。原因是,首先,即使朴素的贝叶斯分类器训练速度很快,它在噪声方面也不可靠。其次,要求参数随独特的环境而变化以进行精确跟踪。在本文中,我们提出了一种改进的基于在线随机森林(FCT-ORF)的快速压缩跟踪算法,用于鲁棒的视觉跟踪。首先,我们将有关加权随机投影的思想与自适应压缩感知理论相结合,以利用物体的局部信息和判别信息。第二个原因是用于在线跟踪的在线随机森林分类器,它被证明对噪声的适应性更强并且计算效率更高。实验结果表明,与快速压缩跟踪算法的贡献相比,我们提出的算法在遮挡,外观变化和姿态变化方面具有更好的性能。关键词:快速压缩跟踪/朴素的Byes分类器/在线/随机森林

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