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Bayesian deconvolution of scanning electron microscopy images using point-spread function estimation and non-local regularization

机译:扫描电子显微镜图像的贝叶斯反卷积使用点扩散函数估计和非局部正则化

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摘要

Microscopy is one of the most essential imaging techniques in life sciences. High-quality images are required in order to solve (potentially life-saving) biomedical research problems. Many microscopy techniques do not achieve sufficient resolution for these purposes, being limited by physical diffraction and hardware deficiencies. Electron microscopy addresses optical diffraction by measuring emitted or transmitted electrons instead of photons, yielding nanometer resolution. Despite pushing back the diffraction limit, blur should still be taken into account because of practical hardware imperfections and remaining electron diffraction. Deconvolution algorithms can remove some of the blur in post-processing but they depend on knowledge of the point-spread function (PSF) and should accurately regularize noise. Any errors in the estimated PSF or noise model will reduce their effectiveness. This paper proposes a new procedure to estimate the lateral component of the point spread function of a 3D scanning electron microscope more accurately. We also propose a Bayesian maximum a posteriori deconvolution algorithm with a non-local image prior which employs this PSF estimate and previously developed noise statistics. We demonstrate visual quality improvements and show that applying our method improves the quality of subsequent segmentation steps.
机译:显微镜是生命科学中最重要的成像技术之一。为了解决(潜在地挽救生命)生物医学研究问题,需要高质量的图像。由于物理衍射和硬件缺陷,许多显微镜技术不能达到这些目的的足够分辨率。电子显微镜通过测量发射或透射的电子而不是光子来解决光学衍射问题,从而产生纳米分辨率。尽管降低了衍射极限,但由于实际的硬件缺陷和剩余的电子衍射,仍应考虑模糊。反卷积算法可以消除后处理中的一些模糊,但是它们依赖于点扩展函数(PSF)的知识,并且应该准确地规范化噪声。估计的PSF或噪声模型中的任何错误都会降低其有效性。本文提出了一种新方法,可以更准确地估算3D扫描电子显微镜的点扩散函数的横向分量。我们还提出了一种具有非局部图像的贝叶斯最大后验反卷积算法,该算法采用了该PSF估计和先前开发的噪声统计数据。我们展示了视觉质量的提高,并表明应用我们的方法可以提高后续细分步骤的质量。

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