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Removing Structured Noise with Self-Supervised Blind-Spot Networks

机译:使用自我监督的盲点网络消除结构噪声

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Removal of noise from fluorescence microscopy images is an important first step in many biological analysis pipelines. Current state-of-the-art supervised methods employ convolutional neural networks that are trained with clean (ground-truth) images. Recently, it was shown that self-supervised image denoising with blind spot networks achieves excellent performance even when ground-truth images are not available, as is common in fluorescence microscopy. However, these approaches, e.g. Noise2Void (N2V), generally assume pixel-wise independent noise, thus limiting their applicability in situations where spatially correlated (structured) noise is present. To overcome this limitation, we present Structured Noise2Void (STRUCTN2V), a generalization of blind spot networks that enables removal of structured noise without requiring an explicit noise model or ground truth data. Specifically, we propose to use an extended blind mask (rather than a single pixel/blind spot), whose shape is adapted to the structure of the noise. We evaluate our approach on two real datasets and show that Structn2v considerably improves the removal of structured noise compared to existing standard and blind-spot based techniques.
机译:从荧光显微镜图像去除噪声是许多生物学分析流程中重要的第一步。当前最先进的监督方法采用卷积神经网络,并用干净的(真实的)图像进行训练。最近,显示出即使在没有实地图像的情况下,用盲点网络进行自我监督的图像去噪也能实现出色的性能,这在荧光显微镜中很常见。但是,这些方法例如Noise2Void(N2V)通常假定像素独立的噪声,因此限制了它们在存在空间相关(结构化)噪声的情况下的适用性。为了克服这个限制,我们提出了Structured Noise2Void(S TRUCT N2V),是盲点网络的一种泛型,它可以消除结构化的噪声,而无需明确的噪声模型或地面真实数据。具体来说,我们建议使用扩展的盲板(而不是单个像素/盲点),其形状适合噪声的结构。我们在两个真实的数据集上评估了我们的方法,并表明与现有的基于标准和盲点的技术相比,Structn2v大大改善了结构噪声的去除。

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