一种新的鲁棒初始识别技术

Radha Myilsamy, R. Muthukrishnan
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引用次数: 1

摘要

鲁棒统计方法首次应用于计算机视觉,以提高视觉层次底层特征提取算法的性能。这些方法允许不服从假设模型的数据点的存在,这些点通常被称为“离群值”。近年来,各种鲁棒统计方法被开发并应用于计算机视觉任务。随机样本一致性估计器(RANSAC)由于其简单的实现和鲁棒性被广泛应用于解决这类问题。最近有一些努力旨在提高基本RANSAC算法的效率。N邻点样本一致性(NAPSAC)是计算机视觉任务中使用的RANSAC方法之一。本文提出了一种新的算法,即基于2球法的改进版NAPSAC。通过与RANSAC技术背景下现有算法的仿真研究,研究了所提出算法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INAPSAC: A New Robust Inlier Identification Technique
Robust statistical methods were first adopted in computer vision to improve the performance of feature extraction algorithms at the bottom level of the vision hierarchy. These methods tolerate the presence of data points that do not obey the assumed model such points are typically called “outlier”. Recently, various robust statistical methods have been developed and applied to computer vision tasks. Random Sample Consensus (RANSAC) estimators are one of the widely applied to tackle such problems due to its simple implementation and robustness. There have been a number of recent efforts aimed at increasing the efficiency of the basic RANSAC algorithm. N Adjacent Points Sample Consensus (NAPSAC) is one of the RANSAC method used in computer vision task. In this paper a new algorithm is proposed which is the modified version of NAPSAC with 2-sphere method. The accuracy of the proposed algorithm has been studied through a simulation study along with the existing algorithms in the context of RANSAC techniques.
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