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THE DEVELOPMENT AND COMPARISON OF ROBUST METHODS FOR ESTIMATING THE FUNDAMENTAL MATRIX

机译:估计基本矩阵的稳健方法的发展与比较

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This paper has two goals. The first is to develop a variety of robust methods for the computation of the Fundamental Matrix, the calibration-free representation of camera motion. The methods are drawn from the principal categories of robust estimators, viz. case deletion diagnostics, M-estimators and random sampling, and the paper develops the theory required to apply them to non-linear orthogonal regression problems. Although a considerable amount of interest has focussed on the application of robust estimation in computer vision, the relative merits of the many individual methods are unknown, leaving the potential practitioner to guess at their value. The second goal is therefore to compare and judge the methods. Comparative tests are carried out using correspondences generated both synthetically in a statistically controlled fashion and from feature matching in real imagery. In contrast with previously reported methods the goodness of fit to the synthetic observations is judged not in terms of the fit to the observations per se but in terms of fit to the found truth. A variety of error measures are examined. The experiments allow a statistically satisfying and quasi-optimal method to be synthesized, which is shown to be stable with up to 50 percent outlier contamination, and may still be used if there are more than 50 percent outliers. Performance bounds are established for the method, and a variety of robust methods to estimate the standard deviation of the error and covariance matrix of the parameters are examined. The results of the comparison have broad applicability to vision algorithms where the input data are corrupted not only by noise but also by gross outliers. [References: 61]
机译:本文有两个目标。首先是开发各种健壮的方法来计算基本矩阵,即摄像机运动的无标定表示。这些方法来自稳健估计量的主要类别,即。案例删除诊断,M估计量和随机抽样,并且本文提出了将其应用于非线性正交回归问题的理论。尽管相当多的兴趣集中于鲁棒估计在计算机视觉中的应用,但是许多单独方法的相对优点尚不清楚,这使潜在的从业者不得不猜测它们的价值。因此,第二个目标是比较和判断方法。使用以统计控制方式综合生成的对应关系以及从真实影像中的特征匹配生成的对应关系进行比较测试。与以前报道的方法相反,判断综合观测值的优劣不是根据对观测值本身的适配性,而是根据对所发现真相的适配性。检查了各种错误措施。实验允许合成一种统计上令人满意的准最佳方法,该方法显示出在高达50%的异常值污染的情况下是稳定的,并且如果存在超过50%的异常值,仍可以使用。为该方法建立了性能界限,并检查了各种鲁棒的方法来估计误差的标准偏差和参数的协方差矩阵。比较的结果对视觉算法具有广泛的适用性,在视觉算法中,输入数据不仅会受到噪声的破坏,而且会受到总体异常值的破坏。 [参考:61]

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