Analysis of the least median of squares estimator for computer vision applications

D. Mintz, P. Meer, A. Rosenfeld
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引用次数: 21

Abstract

The robust least-median-of-squares (LMedS) estimator, which can recover a model representing only half the data points, was recently introduced in computer vision. Image data, however, is usually also corrupted by a zero-mean random process (noise) accounting for the measurement uncertainties. It is shown that in the presence of significant noise, LMedS loses its high breakdown point property. A different, two-stage approach in which the uncertainty due to noise is reduced before applying the simplest LMedS procedure is proposed. The superior performance of the technique is proved by comparative graphs.<>
最小二乘中值估计在计算机视觉中的应用分析
鲁棒最小二乘中值估计器(lmed)是最近在计算机视觉领域被引入的一种方法,它可以恢复仅代表一半数据点的模型。然而,由于测量的不确定性,图像数据通常也会被零均值随机过程(噪声)所破坏。结果表明,在噪声较大的情况下,lmed失去了高击穿点的特性。提出了一种不同的两阶段方法,该方法在应用最简单的lmed过程之前降低了噪声引起的不确定性。对比图证明了该技术的优越性。
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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