SWIGS: A Swift Guided Sampling Method

Victor Fragoso, M. Turk
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引用次数: 21

Abstract

We present SWIGS, a Swift and efficient Guided Sampling method for robust model estimation from image feature correspondences. Our method leverages the accuracy of our new confidence measure (MR-Rayleigh), which assigns a correctness-confidence to a putative correspondence in an online fashion. MR-Rayleigh is inspired by Meta-Recognition (MR), an algorithm that aims to predict when a classifier's outcome is correct. We demonstrate that by using a Rayleigh distribution, the prediction accuracy of MR can be improved considerably. Our experiments show that MR-Rayleigh tends to predict better than the often-used Lowe's ratio, Brown's ratio, and the standard MR under a range of imaging conditions. Furthermore, our homography estimation experiment demonstrates that SWIGS performs similarly or better than other guided sampling methods while requiring fewer iterations, leading to fast and accurate model estimates.
SWIGS:一种快速引导抽样方法
我们提出了SWIGS,一种快速有效的从图像特征对应中进行鲁棒模型估计的引导采样方法。我们的方法利用了我们的新置信度度量(MR-Rayleigh)的准确性,它以在线方式为假定的通信分配了正确置信度。瑞利先生受到元识别(MR)的启发,这是一种旨在预测分类器结果是否正确的算法。结果表明,采用瑞利分布可以显著提高磁流变的预测精度。我们的实验表明,在一系列成像条件下,MR- rayleigh倾向于比常用的Lowe’s比率、Brown’s比率和标准MR更好地预测。此外,我们的单应性估计实验表明,SWIGS的性能与其他引导采样方法相似或更好,同时需要更少的迭代,从而实现快速准确的模型估计。
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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