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Variable Elimination for 3D from 2D

机译:来自2D的3D可变消除

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摘要

Accurately reconstructing the 3D geometry of a scene or object observed on 2D images is a difficult problem: there are many unknowns involved (camera pose, scene structure, depth factors) and solving for all these unknowns simultaneously is computationally intensive and suffers from numerical instability. In this paper, we algebraically decouple some of the unknowns so that they can be solved for independently. Decoupling the pose from the other variables has been previously discussed in the literature. Unfortunately, pose estimation is an ill-conditioned problem. In this paper, we algebraically eliminate all the camera pose parameters (i.e., position and orientation) from the structure-from-motion equations for an internally calibrated camera. We then also fully eliminate the structure coordinates from the equations. This yields a very simple set of homogeneous polynomial equations of low degree involving only the depths of the observed points. When considering a small number of tracked points and pictures (e.g., five points on two pictures), these equations can be solved using the sparse resultant method.
机译:准确地重建在2D图像上观察到的场景或对象的3D几何是一个难题:有许多涉及的未知数(摄像机姿势,场景结构,深度因子),并同时解决所有这些未知数的所有未知数。在本文中,我们代数地解耦了一些未知数,以便他们可以独立解决。在文献中讨论了从其他变量中解耦的姿势。不幸的是,姿势估计是一个不良问题。在本文中,我们代数消除了来自用于内部校准相机的结构 - 从运动方程的所有相机姿势参数(即位置和方向)。然后我们还完全消除了来自方程的结构坐标。这产生了一个非常简单的低度的均匀多项式方程,仅涉及观察点的深度。当考虑少量的追踪点和图片(例如,在两张图片上五点)时,可以使用稀疏结果方法来解决这些方程。

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