Reconstruction of linearly parameterized models from single images with a camera of unknown focal length

David Jelinek, C. J. Taylor
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引用次数: 54

Abstract

This paper deals with the problem of recovering the dimensions of an object and its pose from a single image acquired with a camera of unknown focal length. It is assumed that the object in question can be modeled as a polyhedron where the coordinates of the vertices can be expressed as a linear function of a dimension vector, /spl lambda/. The reconstruction program takes as input a set of correspondences between features in the model and features in the image. From this information the program determines an appropriate projection model for the camera (scaled orthographic or perspective), the dimensions of the object, its pose relative to the camera and, in the case of perspective projection, the focal length of the camera. We demonstrate that this reconstruction task can be framed as an unconstrained optimization problem involving a small number of variables, no more than four, regardless of the number of parameters in the dimension vector.
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用未知焦距的相机重建单幅图像的线性参数化模型
本文研究了用未知焦距的相机从单幅图像中恢复物体的尺寸及其姿态的问题。假设所讨论的对象可以建模为多面体,其中顶点的坐标可以表示为维度向量/spl lambda/的线性函数。重建程序将模型中的特征与图像中的特征之间的对应关系集作为输入。根据这些信息,程序确定相机的适当投影模型(缩放的正射影或透视),物体的尺寸,相对于相机的姿态,以及在透视投影的情况下,相机的焦距。我们证明,这个重建任务可以被框定为一个无约束优化问题,涉及少量变量,不超过四个,而不考虑维度向量中的参数数量。
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