Efficiently estimating projective transformations

R. Radke, P. Ramadge, T. Echigo, S. Iisaku
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引用次数: 21

Abstract

The estimation of the parameters of a projective transformation that relates the coordinates of two image planes is a standard problem that arises in image and video mosaicking, virtual video, and problems in computer vision. This problem is often posed as a least squares minimization problem based on a finite set of noisy point samples of the underlying transformation. While in some special cases this problem can be solved using a linear approximation, in general, it results in an 8-dimensional nonquadratic minimization problem that is solved numerically using an 'off-the-shelf' procedure such as the Levenberg-Marquardt algorithm. We show that the general least squares problem for estimating a projective transformation can be analytically reduced to a 2-dimensional nonquadratic minimization problem. Moreover, we provide both analytical and experimental evidence that the minimization of this function is computationally attractive. We propose a particular algorithm that is a combination of a projection and an approximate Gauss-Newton scheme, and experimentally verify that this algorithm efficiently solves the least squares problem.
有效估计射影变换
在图像和视频拼接、虚拟视频和计算机视觉问题中,对两个图像平面坐标的投影变换参数的估计是一个标准问题。该问题通常被提出为基于底层变换的有限噪声点样本集的最小二乘最小化问题。虽然在某些特殊情况下,这个问题可以使用线性近似来解决,但通常情况下,它会导致一个8维非二次最小化问题,使用“现成的”程序(如Levenberg-Marquardt算法)在数值上解决。我们证明了估计射影变换的一般最小二乘问题可以解析化为二维非二次极小化问题。此外,我们提供了分析和实验证据,证明该函数的最小化在计算上是有吸引力的。我们提出了一种结合投影和近似高斯-牛顿格式的特殊算法,并通过实验验证了该算法有效地解决了最小二乘问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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