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Performance of Optimal Registration Estimators

机译:最佳登记估计的性能

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This paper derives a theoretical limit for image registration and presents an iterative estimator that achieves the limit. The variance of any parametric registration is bounded by the Cramer-Rao bound (CRB). This bound is signal-dependent and is proportional to the variance of input noise. Since most available registration techniques are biased, they are not optimal. The bias, however, can be reduced to practically zero by an iterative gradient-based estimator. In the proximity of a solution, this estimator converges to the CRB with a quadratic rate. Images can be brought close to each other, thus speedup the registration process, by a coarse-to-fine multi-scale registration. The performance of iterative registration is finally shown to significantly increase image resolution from multiple low resolution images under translational motions.
机译:本文导出了图像登记的理论限制,并提出了一种实现极限的迭代估计器。任何参数登记的方差都由Cramer-Rao绑定(CRB)界定。这界限依赖于信号依赖性,与输入噪声的方差成比例。由于大多数可用的登记技术偏置,因此它们不是最佳的。然而,偏差可以通过基于迭代梯度的估计器来减少到实际零。在解决方案的接近时,该估计器以二次速率收敛于CRB。图像可以彼此接近,从而加速注册过程,通过粗细的多尺度配准。最后显示迭代注册的性能,以显着提高翻译运动下的多个低分辨率图像的图像分辨率。

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