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Auto-Calibration and Three-Dimensional Reconstruction for Zooming Cameras

机译:变焦相机的自动校准和三维重建

摘要

This dissertation proposes new algorithms to recover the calibration parameters and 3D structure of a scene, using 2D images taken by uncalibrated stationary zooming cameras. This is a common configuration, usually encountered in surveillance camera networks, stereo camera systems, and event monitoring vision systems. This problem is known as camera auto-calibration (also called self-calibration) and the motivation behind this work is to obtain the Euclidean three-dimensional reconstruction and metric measurements of the scene, using only the captured images. Under this configuration, the problem of auto-calibrating zooming cameras differs from the classical auto-calibration problem of a moving camera in two major aspects. First, the camera intrinsic parameters are changing due to zooming. Second, because cameras are stationary in our case, using classical motion constraints, such as a pure translation for example, is not possible. In order to simplify the non-linear complexity of this problem, i.e., auto-calibration of zooming cameras, we have followed a geometric stratification approach. In particular, we have taken advantage of the movement of the camera center, that results from the zooming process, to locate the plane at infinity and, consequently to obtain an affine reconstruction. Then, using the assumption that typical cameras have rectangular or square pixels, the calculation of the camera intrinsic parameters have become possible, leading to the recovery of the Euclidean 3D structure. Being linear, the proposed algorithms were easily extended to the case of an arbitrary number of images and cameras. Furthermore, we have devised a sufficient constraint for detecting scene parallel planes, a useful information for solving other computer vision problems.
机译:本文提出了一种新的算法,可以利用未校准的静态变焦相机拍摄的2D图像来恢复场景的校准参数和3D结构。这是常见的配置,通常在监视摄像机网络,立体摄像机系统和事件监视视觉系统中遇到。这个问题被称为相机自动校准(也称为自校准),这项工作的动机是仅使用捕获的图像来获得场景的欧几里得三维重建和度量度量。在这种配置下,自动校准变焦相机的问题在两个主要方面不同于移动相机的经典自动校准问题。首先,相机固有参数由于缩放而变化。其次,由于相机在我们的情况下是静止的,因此无法使用经典运动约束(例如纯平移)。为了简化此问题的非线性复杂性,即缩放相机的自动校准,我们采用了几何分层方法。尤其是,我们利用了缩放过程导致的相机中心移动,将平面定位在无穷远处,从而获得了仿射重建。然后,使用典型摄像机具有矩形或正方形像素的假设,可以计算摄像机固有参数,从而恢复欧几里得3D结构。由于是线性的,所提出的算法很容易扩展到任意数量的图像和照相机的情况。此外,我们设计了足够的约束来检测场景平行平面,这对于解决其他计算机视觉问题是有用的信息。

著录项

  • 作者

    Elamsy Tarik A.;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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