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Degeneracy in Self-Calibration Revisited and a Deep Learning Solution for Uncalibrated SLAM

机译:自我校准的退化性重新审视和未校准的深度学习解决方案

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Self-calibration of camera intrinsics and radial distortion has a long history of research in the computer vision community. However, it remains rare to see real applications of such techniques to modern Simultaneous Localization And Mapping (SLAM) systems, especially in driving scenarios. In this paper, we revisit the geometric approach to this problem, and provide a theoretical proof that explicitly shows the ambiguity between radial distortion and scene depth when two-view geometry is used to self-calibrate the radial distortion. In view of such geometric degeneracy, we propose a learning approach that trains a convolutional neural network (CNN) on a large amount of synthetic data. We demonstrate the utility of our proposed method by applying it as a checkerboard-free calibration tool for SLAM, achieving comparable or superior performance to previous learning and hand-crafted methods.
机译:相机内在和径向失真的自校准具有计算机视觉社区的历史悠久。然而,看到这种技术对现代同步的定位和映射(SLAM)系统的实际应用仍然很少见,尤其是在驾驶场景中。在本文中,我们重新审视了这个问题的几何方法,并提供了一种理论上证明,当使用双视图几何形状来自我校准径向失真时,明确地示出了径向失真和场景深度之间的模糊性。鉴于这种几何退化,我们提出了一种学习方法,可以在大量的合成数据上训练卷积神经网络(CNN)。我们通过将其作为SLAM的无棋盘校准工具应用,展示了我们提出的方法的效用,实现了以前的学习和手工制作方法的可比性或卓越的性能。

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