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Rotationally-invariant non-local means for image denoising and tomography

机译:用于图像去噪和层析成像的旋转不变非局部方法

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Many samples imaged in structural biology and material science contain several similar particles at random locations and orientations. Model-based iterative reconstruction (MBIR) methods can in principle be used to exploit such redundancies in images through log prior probabilities that accurately account for non-local similarity between the particles. However, determining such a log prior term can be challenging. Several denoising algorithms like non-local means (NLM) successfully capture such non-local redundancies, but the problem is two-fold: NLM is not explicitly formulated as a cost function, and neither can it capture similarity between randomly oriented particles. In this paper, we propose a rotationally-invariant nonlocal means (RINLM) algorithm, and describe a method to implement RINLM as a prior model using a novel framework that we call plug-and-play priors. We introduce the idea of patch pre-rotation to make RINLM computationally tractable. Finally, we showcase image denoising and 2D tomography results, using the proposed RINLM algorithm, as we highlight high reconstruction quality, image sharpness, and artifact suppression.
机译:在结构生物学和材料科学中成像的许多样本在随机的位置和方向上都包含多个相似的粒子。原则上,基于模型的迭代重建(MBIR)方法可用于通过对数先验概率(准确解释粒子之间的非局部相似性)来利用图像中的此类冗余。然而,确定这样的对数先验项可能是具有挑战性的。诸如非局部均值(NLM)的几种降噪算法成功捕获了此类非局部冗余,但问题是双重的:NLM没有明确地表述为成本函数,也无法捕获随机定向的粒子之间的相似性。在本文中,我们提出了一种旋转不变的非局部均值(RINLM)算法,并描述了一种使用称为即插即用先验的新颖框架将RINLM实现为先验模型的方法。我们介绍了补丁预旋转的概念,以使RINLM在计算上易于处理。最后,我们使用提出的RINLM算法展示图像去噪和2D层析成像结果,因为我们强调了高重建质量,图像清晰度和伪影抑制。

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