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Patch-Based Non-local Bayesian Networks for Blind Confocal Microscopy Denoising

机译:基于补丁的非本地贝叶斯网络,用于盲人共聚焦显微镜去噪

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Confocal microscopy is essential for histopathologic cell visualization and quantification. Despite its significant role in biology, fluorescence confocal microscopy suffers from the presence of inherent noise during image acquisition. Non-local patch-wise Bayesian mean filtering (NLB) was until recently the state-of-the-art denoising approach. However, classic denoising methods have been outperformed by neural networks in recent years. In this work, we propose to exploit the strengths of NLB in the framework of Bayesian deep learning. We do so by designing a convolutional neural network and training it to learn parameters of a Gaussian model approximating the prior on noise-free patches given their nearest, similar yet non-local, neighbors. We then apply Bayesian reasoning to leverage the prior and information from the noisy patch in the process of approximating the noise-free patch. Specifically, we use the closed-form analytic maximum a posteriori (MAP) estimate in the NLB algorithm to obtain the noise-free patch that maximizes the posterior distribution. The performance of our proposed method is evaluated on confocal microscopy images with real noise Poisson-Gaussian noise. Our experiments reveal the competitive performance of our approach compared to the state-of-the-art.
机译:共聚焦显微镜对于组织病理细胞可视化和定量至关重要。尽管在生物学中具有重要作用,但荧光共聚焦显微镜检查了图像采集期间存在固有噪声。非本地补丁贝叶斯均值滤波(NLB)直到最近是最先进的去噪方法。然而,近年来神经网络的经典去致盲方法已经超越。在这项工作中,我们建议利用贝叶斯深度学习框架中NLB的优势。我们通过设计卷积神经网络并训练它来学习高斯模型的参数,逼近近似的无噪声斑块,给出他们最近的,类似但非本地邻居的无噪声斑块。然后,我们将贝叶斯推理应用于在近似无噪声补丁的过程中从嘈杂的补丁中利用之前和信息。具体而言,我们在NLB算法中使用闭合形式的分析最大后验估计(MAP)估计,以获得最大化后部分布的无噪声贴片。我们提出的方法的表现是在具有真正噪声泊松 - 高斯噪声的共聚焦显微镜图像上进行评估。我们的实验揭示了我们与最先进的方法的竞争性能。

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