Consistency of robust estimators in multi-structural visual data segmentation

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摘要

A theoretical framework is presented to study the consistency of robust estimators used in vision problems involving extraction of fine details. A strong correlation between asymptotic performance of a robust estimator and the asymptotic bias of its scale estimate is mathematically demonstrated where the structures are assumed to be linear corrupted by Gaussian noise. A new measure for the inconsistency of scale estimators is defined and formulated by deriving the functional forms of four recent high-breakdown robust estimators. For each estimator, the inconsistency measures are numerically evaluated for a range of mutual distances between structures and inlier ratios, and the minimum mutual distance between the structures, for which each estimator returns a non-bridging fit, is calculated.

论文关键词:Robust scale estimation,Robust model fitting,Consistent estimators

论文评审过程:Received 3 November 2006, Revised 11 May 2007, Accepted 16 May 2007, Available online 24 May 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.05.009