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Tractable Algorithms for Robust Model Estimation

机译:实用的鲁棒模型估计算法

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What is the computational complexity of geometric model estimation in the presence of noise and outliers? We show that the number of outliers can be minimized in polynomial time with respect to the number of measurements, although exponential in the model dimension. Moreover, for a large class of problems, we prove that the statistically more desirable truncated -norm can be optimized with the same complexity. In a similar vein, it is also shown how to transform a multi-model estimation problem into a purely combinatorial one-with worst-case complexity that is polynomial in the number of measurements but exponential in the number of models. We apply our framework to a series of hard fitting problems. It gives a practical method for simultaneously dealing with measurement noise and large amounts of outliers in the estimation of low-dimensional models. Experimental results and a comparison to random sampling techniques are presented for the applications rigid registration, triangulation and stitching.
机译:在存在噪声和异常值的情况下,几何模型估计的计算复杂度是多少?我们表明,相对于测量次数,可以在多项式时间内将异常值的数量减到最小,尽管模型维数是指数级的。此外,对于一大类问题,我们证明可以用相同的复杂度优化统计上更理想的截断范数。同样,它还显示了如何将多模型估计问题转换为具有最坏情况的复杂度的纯粹组合单项问题,该复杂度在测量数量上是多项式,而在模型数量上是指数级的。我们将框架应用于一系列棘手的问题。它提供了一种实用的方法,可以在低维模型的估计中同时处理测量噪声和大量离群值。给出了刚性套准,三角剖分和缝合的应用的实验结果以及与随机采样技术的比较。

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