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Efficient Learning of Linear Predictors for Template Tracking

机译:有效学习线性预测器以进行模板跟踪

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摘要

The research on tracking templates or image patches in a sequence of images has been largely dominated by energy-minimization-based methods. However, since its introduction in Jurie and Dhome (IEEE Trans Pattern Anal Mach Intell, 2002), the learning-based approach called linear predictors has proven to be an efficient and reliable alternative for template tracking, demonstrating superior tracking speed and robustness. But, their time intensive learning procedure prevented their use in applications where online learning is essential. Indeed, Holzer et al. (Adaptive linear predictors for real-time tracking, 2010) presented an iterative method to learn linear predictors; but it starts with a small template that makes it unstable at the beginning. Therefore, we propose three methods for highly efficient learning of full-sized linear predictors-where the first one is based on dimensionality reduction using the discrete cosine transform; the second is based on an efficient reformulation of the learning equations; and, the third is a combination of both. They show different characteristics with respect to learning time and tracking robustness, which makes them suitable for different scenarios.
机译:对跟踪图像序列中的模板或图像补丁的研究在很大程度上以基于能量最小化的方法为主导。但是,自从其在Jurie和Dhome(IEEE Trans Pattern Anal Mach Intell,2002年)中引入以来,被称为线性预测器的基于学习的方法已被证明是模板跟踪的一种有效且可靠的替代方法,证明了卓越的跟踪速度和鲁棒性。但是,他们的时间密集型学习程序使他们无法在需要在线学习的应用程序中使用。实际上,Holzer等人。 (用于实时跟踪的自适应线性预测器,2010年)提出了一种学习线性预测器的迭代方法。但它从一个小的模板开始,使其在一开始就不稳定。因此,我们提出了三种用于全尺寸线性预测变量高效学习的方法,第一种方法是基于使用离散余弦变换的降维方法;第二种方法是基于离散余弦变换的降维方法。第二个是基于对学习方程的有效重构。第三,是两者的结合。它们在学习时间和跟踪鲁棒性方面表现出不同的特征,这使其适用于不同的场景。

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