Opt Express. 2023 Apr 24;31(9):14159-14173. doi: 10.1364/OE.482856.
Low-dose imaging techniques have many important applications in diverse fields, from biological engineering to materials science. Samples can be protected from phototoxicity or radiation-induced damage using low-dose illumination. However, imaging under a low-dose condition is dominated by Poisson noise and additive Gaussian noise, which seriously affects the imaging quality, such as signal-to-noise ratio, contrast, and resolution. In this work, we demonstrate a low-dose imaging denoising method that incorporates the noise statistical model into a deep neural network. One pair of noisy images is used instead of clear target labels and the parameters of the network are optimized by the noise statistical model. The proposed method is evaluated using simulation data of the optical microscope, and scanning transmission electron microscope under different low-dose illumination conditions. In order to capture two noisy measurements of the same information in a dynamic process, we built an optical microscope that is capable of capturing a pair of images with independent and identically distributed noises in one shot. A biological dynamic process under low-dose condition imaging is performed and reconstructed with the proposed method. We experimentally demonstrate that the proposed method is effective on an optical microscope, fluorescence microscope, and scanning transmission electron microscope, and show that the reconstructed images are improved in terms of signal-to-noise ratio and spatial resolution. We believe that the proposed method could be applied to a wide range of low-dose imaging systems from biological to material science.
低剂量成像技术在从生物工程到材料科学的多个领域都有重要的应用。通过低剂量照明,可以保护样品免受光毒性或辐射诱导的损伤。然而,在低剂量条件下进行成像会受到泊松噪声和加性高斯噪声的严重影响,这会严重影响成像质量,例如信噪比、对比度和分辨率。在这项工作中,我们展示了一种将噪声统计模型纳入深度神经网络的低剂量成像去噪方法。该方法使用一对噪声图像代替清晰的目标标签,并通过噪声统计模型优化网络的参数。该方法使用不同低剂量照明条件下的光学显微镜和扫描透射电子显微镜的模拟数据进行评估。为了在动态过程中捕捉同一信息的两个噪声测量值,我们构建了一个光学显微镜,能够在一次拍摄中捕捉一对具有独立同分布噪声的图像。对低剂量条件下的生物动态过程进行了成像,并使用提出的方法进行了重建。我们通过实验证明了该方法在光学显微镜、荧光显微镜和扫描透射电子显微镜上的有效性,并表明重建图像在信噪比和空间分辨率方面都得到了改善。我们相信,该方法可以应用于从生物学到材料科学的各种低剂量成像系统。