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Epipole Estimation under Pure Camera Translation

机译:纯相机平移下的极点估计

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摘要

The position of the epipole (or focus of expansion), when a camera moves under pure translation, provides useful information in a range of computer vision applications. Here we present a robust method to estimate the epipole, which is based on the relation between the epipole and the fundamental matrix and which uses both a binning technique and random sample consensus (RANSAC). The required input data is only two uncalibrated images. No prior knowledge of either the parameters of the camera, or camera motion is required. Firstly, we use a linear method to get an initial estimate of the epipole. This is then used to initialise a non-linear optimization method, based on the minimization of the epipolar distance, in order to refine this estimate and yield a highly accurate epipole. Simultaneously, the method computes a highly accurate fundamental matrix. Extensive experimental results on real images and simulated data illustrate that the new method, which leads to an enormous improvement on the accuracy of the epipole, performs very well in terms of robustness to outliers and noises.
机译:当照相机在纯平移下移动时,极点的位置(或扩展焦点)可在一系列计算机视觉应用程序中提供有用的信息。在这里,我们提出了一种可靠的方法来估计子极,该方法基于子极与基本矩阵之间的关系,并且使用分箱技术和随机样本共识(RANSAC)。所需的输入数据仅是两个未校准的图像。无需事先了解摄像机的参数或摄像机的运动。首先,我们使用线性方法来获得对子极的初始估计。然后,基于对极距离的最小化,将其用于初始化非线性优化方法,以完善该估计并产生高度精确的对极。同时,该方法计算出高精度的基本矩阵。在真实图像和模拟数据上的大量实验结果表明,这种新方法可以极大地提高Epipole的精度,并且在对异常值和噪声的鲁棒性方面表现出色。

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