通过最小化联合鲁棒目标函数来估计模型参数和边界

C. Stewart, Kishore Bubna, A. Perera
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引用次数: 10

摘要

计算机视觉中的许多问题都需要对模型参数和边界进行估计,这限制了从统计学角度进行标准估计技术的有效性。示例问题包括从距离数据重建表面,估计参数运动模型,拟合圆弧或椭圆弧到边缘数据,以及许多其他问题。本文介绍了一种新的估计技术,称为“域边界m估计器”,它是普通m估计器的推广,在联合鲁棒目标函数中结合模型参数和边界上的误差度量。给定一个粗略初始化的目标函数的最小化产生参数和边界的同时估计。dbm估计器已被应用于估计线段、曲面和两个边链之间的对称变换。它不受异常值的影响,并防止边界估计跨越甚至小幅度的不连续。
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Estimating model parameters and boundaries by minimizing a joint, robust objective function
Many problems in computer vision require estimation of both model parameters and boundaries, which limits the usefulness of standard estimation techniques from statistics. Example problems include surface reconstruction from range data, estimation of parametric motion models, fitting circular or elliptic arcs to edgel data, and many others. This paper introduces a new estimation technique, called the "Domain Bounding M-Estimator", which is a generalization of ordinary M-estimators combining error measures on model parameters and boundaries in a joint, robust objective function. Minimization of the objective function given a rough initialization yields simultaneous estimates of parameters and boundaries. The DBM-Estimator has been applied to estimating line segments, surfaces, and the symmetry transformation between two edgel chains. It is unaffected by outliers and prevents boundary estimates from crossing even small magnitude discontinuities.
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