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A Feature based Reconstruction Model for Fluorescence Microscopy Image Denoising

机译:基于特征的荧光显微镜图像降噪重建模型

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摘要

The advent of Fluorescence Microscopy over the last few years have dramatically improved the problem of visualization and tracking of specific cellular objects for biological inference. But like any other imaging system, fluorescence microscopy has its own limitations. The resultant images suffer from the effect of noise due to both signal dependent and signal independent factors, thereby limiting the possibility of biological inferencing. Denoising is a class of image processing algorithms that aim to remove noise from acquired images and has gained wide attention in the field of fluorescence microscopy image restoration. In this paper, we propose an image denoising algorithm based on the concept of feature extraction through multifractal decomposition and then estimate a noise free image from the gradients restricted to these features. Experimental results over simulated and real fluorescence microscopy data prove the merit of the proposed approach, both visually and quantitatively.
机译:过去几年中荧光显微镜的出现极大地改善了可视化和跟踪特定细胞对象以进行生物学推断的问题。但是,像其他任何成像系统一样,荧光显微镜也有其自身的局限性。由于依赖于信号和依赖于信号的因素,所得图像受到噪声的影响,从而限制了生物推断的可能性。去噪是一类图像处理算法,其目的是消除所获取图像中的噪声,并在荧光显微镜图像恢复领域引起了广泛关注。在本文中,我们提出了一种基于特征的概念的图像去噪算法,该特征通过多重分形分解来提取,然后从限于这些特征的梯度中估计出无噪声的图像。在模拟和真实荧光显微镜数据上的实验结果从视觉和定量上证明了该方法的优点。

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