Real-time learning of accurate patch rectification

Stefan Hinterstoißer, Oliver Kutter, Nassir Navab, P. Fua, V. Lepetit
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引用次数: 34

Abstract

Recent work showed that learning-based patch rectification methods are both faster and more reliable than affine region methods. Unfortunately, their performance improvements are founded in a computationally expensive offline learning stage, which is not possible for applications such as SLAM. In this paper we propose an approach whose training stage is fast enough to be performed at run-time without the loss of accuracy or robustness. To this end, we developed a very fast method to compute the mean appearances of the feature points over sets of small variations that span the range of possible camera viewpoints. Then, by simply matching incoming feature points against these mean appearances, we get a coarse estimate of the viewpoint that is refined afterwards. Because there is no need to compute descriptors for the input image, the method is very fast at run-time. We demonstrate our approach on tracking-by-detection for SLAM, real-time object detection and pose estimation applications.
实时学习准确的补丁整改
最近的研究表明,基于学习的补丁校正方法比仿射区域方法更快、更可靠。不幸的是,它们的性能改进是建立在计算昂贵的离线学习阶段,这对于SLAM等应用程序是不可能的。在本文中,我们提出了一种训练阶段足够快的方法,可以在不损失准确性和鲁棒性的情况下在运行时执行。为此,我们开发了一种非常快速的方法来计算跨越可能的相机视点范围的小变化集的特征点的平均外观。然后,通过简单地将输入的特征点与这些平均外观进行匹配,我们得到一个粗略的视点估计,然后进行细化。由于不需要计算输入图像的描述符,因此该方法在运行时非常快。我们展示了SLAM、实时目标检测和姿态估计应用的检测跟踪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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