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Random sampling and model competition for guaranteed multiple consensus sets estimation

机译:保证多项共识估算的随机抽样和模型竞争

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摘要

Robust extraction of consensus sets from noisy data is a fundamental problem in robot vision. Existing multimodel estimation algorithms have shown success on large consensus sets estimations. One remaining challenge is to extract small consensus sets in cluttered multimodel data set. In this article, we present an effective multimodel extraction method to solve this challenge. Our technique is based on smallest consensus set random sampling, which we prove can guarantee to extract all consensus sets larger than the smallest set from input data. We then develop an efficient model competition scheme that iteratively removes redundant and incorrect model samplings. Extensive experiments on both synthetic data and real data with high percentage of outliers and multimodel intersections demonstrate the superiority of our method.
机译:从嘈杂数据中的共识集合的强大提取是机器人视觉中的根本问题。 现有的多模型估计算法在大共识集估计上显示了成功。 一个剩下的挑战是在杂乱的多模块数据集中提取小共识集。 在本文中,我们提出了一种有效的多模型提取方法来解决这一挑战。 我们的技术基于最小的共识设置随机采样,我们证明可以保证提取比从输入数据的最小集合大的所有共识集。 然后,我们开发一个有效的模型竞争方案,迭代地删除冗余和不正确的模型采样。 具有高比例的综合性数据和实际数据的广泛实验,具有高比例的异常值和多模型交叉点,证明了我们方法的优越性。

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