无先验匹配的基本矩阵估计

N. Noury, F. Sur, M. Berger
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引用次数: 12

摘要

本文提出了一种计算运动问题结构对应关系和基本矩阵的概率框架。受Moisan和Stival[1]的启发,我们建议使用a - contrario模型,这是鲁棒滤波环境中阈值问题的一个很好的答案。与大多数现有的感知对应设置和几何评估是独立步骤的算法相反,该算法是一种一体化的方法。我们证明了它对重复模式具有鲁棒性,而重复模式通常难以明确匹配,从而在基本矩阵估计中提出了许多问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fundamental Matrix Estimation Without Prior Match
This paper presents a probabilistic framework for computing correspondences and fundamental matrix in the structure from motion problem. Inspired by Moisan and Stival [1], we suggest using an a contrario model, which is a good answer to threshold problems in the robust filtering context. Contrary to most existing algorithms where perceptual correspondence setting and geometry evaluation are independent steps, the proposed algorithm is an all-in-one approach. We show that it is robust to repeated patterns which are usually difficult to unambiguously match and thus raise many problems in the fundamental matrix estimation.
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