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Efficient Learning of Linear Predictors Using Dimensionality Reduction

机译:使用维度减少高效地学习线性预测器

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Using Linear Predictors for template tracking enables fast and reliable real-time processing. However, not being able to learn new templates online limits their use in applications where the scene is not known a priori and multiple templates have to be added online, such as SLAM or SfM. This especially holds for applications running on low-end hardware such as mobile devices. Previous approaches either had to learn Linear Predictors offline, or start with a small template and iteratively grow it over time . We propose a fast and simple learning procedure which reduces the necessary training time by up to two orders of magnitude while also slightly improving the tracking robustness with respect to large motions and image noise. This is illustrated in an exhaustive evaluation where we compare our approach with state-of-the-art approaches. Additionally, we show the learning and tracking in mobile phone applications which demonstrates the efficiency of the proposed approach.
机译:使用用于模板跟踪的线性预测器可以快速可靠的实时处理。但是,无法在线学习新模板限制它们在场景未知的应用程序中的应用程序,并且必须在线添加多个模板,例如SLAM或SFM。这尤其适用于在低端硬件上运行的应用程序,例如移动设备。以前的方法要么必须离线学习线性预测器,或者从小模板开始,并随着时间的推移迭代地发展。我们提出了一种快速而简单的学习程序,可将必要的训练时间减少到多个数量级,同时还略微提高了关于大型运动和图像噪声的跟踪鲁棒性。这在详尽评估中被说明,我们将我们的方法与最先进的方法进行比较。此外,我们在移动电话应用中显示了学习和跟踪,展示了所提出的方法的效率。

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