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Renormalization Returns: Hyper-renormalization and Its Applications

机译:重归一化返回:超重归一化及其应用

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The technique of "renormalization" for geometric estimation attracted much attention when it was proposed in eaxly 1990s for having higher accuracy than any other then known methods. Later, it was replaced by minimization of the reprojection error. This paper points out that renormalization can be modified so that it outperforms reprojection error minimization. The key fact is that renormalization directly specifies equations to solve, just as the "estimation equation" approach in statistics, rather than minimizing some cost. Exploiting this fact, we modify the problem so that the solution has zero bias up to high order error terms; we call the resulting scheme hyper-renormalization. We apply it to ellipse fitting to demonstrate that it indeed surpasses reprojection error minimization. We conclude that it is the best method available today.
机译:几何估计的“重新归一化”技术在eaxly 1990年代被提出时,由于比任何其他已知方法都具有更高的精度而引起了极大的关注。后来,它被最小化的重新投影误差所代替。本文指出,可以修改重归一化,使其优于重投影误差最小化。关键事实是,重新归一化直接指定要求解的方程式,就像统计中的“估计方程式”方法一样,而不是使某些成本最小化。利用这一事实,我们修改了问题,以使解决方案在高阶误差项之前具有零偏差;我们称结果方案为超重归一化。我们将其应用于椭圆拟合,以证明它确实超过了重投影误差最小化。我们得出结论,这是当今可用的最佳方法。

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