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Fast and accurate marker-based projective registration method for uncalibrated transmission electron microscope tilt series.

机译:快速准确的基于标记的投影校准方法,用于未校准的透射电子显微镜倾斜系列。

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摘要

This paper presents a fast and accurate marker-based automatic registration technique for aligning uncalibrated projections taken from a transmission electron microscope (TEM) with different tilt angles and orientations. Most of the existing TEM image alignment methods estimate the similarity between images using the projection model with least-squares metric and guess alignment parameters by computationally expensive nonlinear optimization schemes. Approaches based on the least-squares metric which is sensitive to outliers may cause misalignment since automatic tracking methods, though reliable, can produce a few incorrect trajectories due to a large number of marker points. To decrease the influence of outliers, we propose a robust similarity measure using the projection model with a Gaussian weighting function. This function is very effective in suppressing outliers that are far from correct trajectories and thus provides a more robust metric. In addition, we suggest a fast search strategy based on the non-gradient Powell's multidimensional optimization scheme to speed up optimization as only meaningful parameters are considered during iterative projection model estimation. Experimental results show that our method brings more accurate alignment with less computational cost compared to conventional automatic alignment methods.
机译:本文提出了一种快速,准确的,基于标记的自动套准技术,用于对齐从透射电子显微镜(TEM)截取的具有不同倾斜角度和方向的未校准投影。现有的大多数TEM图像对准方法都使用具有最小二乘度量的投影模型来估计图像之间的相似性,并通过计算量大的非线性优化方案来猜测对准参数。基于离群值敏感的最小二乘度量的方法可能会导致未对准,因为自动跟踪方法尽管可靠,但由于标记点数量众多,会产生一些不正确的轨迹。为了减少离群值的影响,我们提出了一种使用具有高斯加权函数的投影模型的鲁棒相似性度量。此功能在抑制远离正确轨迹的离群值方面非常有效,因此可提供更可靠的度量。此外,我们建议基于非梯度Powell多维优化方案的快速搜索策略,以加快优化速度,因为在迭代投影模型估计期间仅考虑有意义的参数。实验结果表明,与传统的自动比对方法相比,我们的方法能够以更低的计算成本实现更精确的比对。

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