降噪
计算机科学
人工智能
噪音(视频)
采样(信号处理)
显微镜
计算机视觉
反问题
图像处理
图像去噪
图像质量
模式识别(心理学)
各项异性扩散
转化(遗传学)
扩散
图像噪声
荧光显微镜
反向
过程(计算)
图像(数学)
非本地手段
图像复原
噪声测量
图像形成
背景噪声
薄层荧光显微镜
视频去噪
自适应采样
图像配准
显微镜
作者
Qinxuan Luo,Zi-Wen Liu,Ge Yang
摘要
Fluorescence microscopy is an important imaging technique for biological research and applications. However, owing to various constraints in its engineering implementation and image acquisition, the acquired images often suffer from substantial noise. Although many denoising methods have been proposed, their applicability is limited by the distinct properties of fluorescence microscopy images. In particular, in real-world applications, it is often challenging and sometimes infeasible to acquire a large number of paired noisy-clean images for supervised training, and it is impractical to parameterize and estimate all types of real-world noise distributions. We propose ED-Diff, a zero-shot denoising algorithm based on diffusion priors. ED-Diff integrates the optimization solution of inverse problems with the diffusion sampling process and introduces a noisy image transformation module (NiTM) with an encoder-decoder structure to handle real-world noise scenarios. Extensive experiments on multiple real-world datasets validated the effectiveness of NiTM, demonstrating that ED-Diff exhibits competitive and robust performance.
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