LUCYD: A Feature-Driven Richardson-Lucy Deconvolution Network

Tomás Chobola, Gesine Müller, V. Dausmann, Anton Theileis, J. Taucher, J. Huisken, Tingying Peng
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引用次数: 1

Abstract

The process of acquiring microscopic images in life sciences often results in image degradation and corruption, characterised by the presence of noise and blur, which poses significant challenges in accurately analysing and interpreting the obtained data. This paper proposes LUCYD, a novel method for the restoration of volumetric microscopy images that combines the Richardson-Lucy deconvolution formula and the fusion of deep features obtained by a fully convolutional network. By integrating the image formation process into a feature-driven restoration model, the proposed approach aims to enhance the quality of the restored images whilst reducing computational costs and maintaining a high degree of interpretability. Our results demonstrate that LUCYD outperforms the state-of-the-art methods in both synthetic and real microscopy images, achieving superior performance in terms of image quality and generalisability. We show that the model can handle various microscopy modalities and different imaging conditions by evaluating it on two different microscopy datasets, including volumetric widefield and light-sheet microscopy. Our experiments indicate that LUCYD can significantly improve resolution, contrast, and overall quality of microscopy images. Therefore, it can be a valuable tool for microscopy image restoration and can facilitate further research in various microscopy applications. We made the source code for the model accessible under https://github.com/ctom2/lucyd-deconvolution.
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LUCYD:一个功能驱动的Richardson-Lucy反卷积网络
在生命科学中获取微观图像的过程通常会导致图像退化和损坏,其特征是存在噪声和模糊,这对准确分析和解释所获得的数据构成了重大挑战。LUCYD是一种体积显微图像恢复的新方法,它结合了Richardson-Lucy反卷积公式和由全卷积网络获得的深度特征融合。通过将图像形成过程集成到特征驱动的恢复模型中,该方法旨在提高恢复图像的质量,同时降低计算成本并保持高度的可解释性。我们的研究结果表明,LUCYD在合成和真实显微镜图像中都优于最先进的方法,在图像质量和通用性方面取得了卓越的性能。我们通过在两种不同的显微镜数据集(包括体积宽视场和光片显微镜)上对该模型进行评估,表明该模型可以处理各种显微镜模式和不同的成像条件。我们的实验表明,LUCYD可以显著提高显微镜图像的分辨率、对比度和整体质量。因此,它可以作为一种有价值的显微镜图像恢复工具,并可以促进在各种显微镜应用领域的进一步研究。我们在https://github.com/ctom2/lucyd-deconvolution下提供了模型的源代码。
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