Robust regression with projection based M-estimators

Haifeng Chen, P. Meer
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引用次数: 103

Abstract

The robust regression techniques in the RANSAC family are popular today in computer vision, but their performance depends on a user supplied threshold. We eliminate this drawback of RANSAC by reformulating another robust method, the M-estimator, as a projection pursuit optimization problem. The projection based pbM-estimator automatically derives the threshold from univariate kernel density estimates. Nevertheless, the performance of the pbM-estimator equals or exceeds that of RANSAC techniques tuned to the optimal threshold, a value which is never available in practice. Experiments were performed both with synthetic and real data in the affine motion and fundamental matrix estimation tasks.
基于投影m估计的鲁棒回归
RANSAC家族中的鲁棒回归技术目前在计算机视觉中很流行,但它们的性能取决于用户提供的阈值。我们通过将另一种鲁棒方法m -估计器重新表述为投影寻迹优化问题来消除RANSAC的这一缺点。基于投影的pbm估计器从单变量核密度估计中自动导出阈值。然而,pbm估计器的性能等于或超过调优到最佳阈值的RANSAC技术的性能,这个值在实践中永远不可用。在仿射运动和基本矩阵估计任务中分别用合成数据和真实数据进行了实验。
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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