Guo Xiangji, Xie Fei, Yang Tingkai, Ming Ming, Chen Tao
Hangzhou Institute for Advanced Study, University of Chinese Academy of Sciences, Hangzhou 310024, China.
Sensors (Basel). 2025 Jun 20;25(13):3842. doi: 10.3390/s25133842.
In high-resolution microscopic imaging, using shorter-wavelength ultraviolet (UV) lasers as illumination sources is a common approach. However, the high spatial coherence of such lasers, combined with the surface roughness of the sample, often introduces disturbances in the received optical field, resulting in strong speckle noise. This paper presents a novel speckle noise suppression method specifically designed for coherent laser-based microscopic imaging. The proposed approach integrates statistical physical modeling and image gradient discrepancy into the training of a Cycle Generative Adversarial Network (CycleGAN), capturing the perturbation mechanism of speckle noise in the optical field. By incorporating these physical constraints, the method effectively enhances the model's ability to suppress speckle noise without requiring annotated clean data. Experimental results under high-resolution laser microscopy settings demonstrate that the introduced constraints successfully guide network training and significantly outperform traditional filtering methods and unsupervised CNNs in both denoising performance and training efficiency. While this work focuses on microscopic imaging, the underlying framework offers potential extensibility to other laser-based imaging modalities with coherent noise characteristics.
在高分辨率显微成像中,使用较短波长的紫外(UV)激光作为照明源是一种常见的方法。然而,此类激光的高空间相干性与样品的表面粗糙度相结合,常常会在接收光场中引入干扰,从而产生强烈的散斑噪声。本文提出了一种专门为基于相干激光的显微成像设计的新型散斑噪声抑制方法。所提出的方法将统计物理建模和图像梯度差异整合到循环生成对抗网络(CycleGAN)的训练中,捕捉光场中散斑噪声的扰动机制。通过纳入这些物理约束,该方法有效地增强了模型抑制散斑噪声的能力,而无需带注释的干净数据。高分辨率激光显微镜设置下的实验结果表明,引入的约束成功地指导了网络训练,并且在去噪性能和训练效率方面均显著优于传统滤波方法和无监督卷积神经网络。虽然这项工作专注于显微成像,但基础框架为其他具有相干噪声特性的基于激光的成像模态提供了潜在的可扩展性。