Denoising is a fundamental challenge in scientific imaging. Deep convolutional neural networks (CNNs) provide the current state of the art in denoising natural images, where they produce impressive results. However, their potential has barely been explored in the context of scientific imaging. Denoising CNNs are typically trained on real natural images artificially corrupted with simulated noise. In contrast, in scientific applications, noiseless ground-truth images are usually not available. To address this issue, we propose a simulation-based denoising (SBD) framework, in which CNNs are trained on simulated images. We test the framework on data obtained from transmission electron microscopy (TEM), an imaging technique with widespread applications in material science, biology, and medicine. SBD outperforms existing techniques by a wide margin on a simulated benchmark dataset, as well as on real data. Apart from the denoised images, SBD generates likelihood maps to visualize the agreement between the structure of the denoised image and the observed data. Our results reveal shortcomings of state-of-the-art denoising architectures, such as their small field-of-view: substantially increasing the field-of-view of the CNNs allows them to exploit non-local periodic patterns in the data, which is crucial at high noise levels. In addition, we analyze the generalization capability of SBD, demonstrating that the trained networks are robust to variations of imaging parameters and of the underlying signal structure. Finally, we release the first publicly available benchmark dataset of TEM images, containing 18,000 examples.
翻译:深层神经神经网络(CNNs)在解密自然图像方面提供了最新的最新科技水平,这些网络产生了令人印象深刻的结果。然而,这些网络的潜力在科学成像方面几乎没有探索。Denoois CNN通常在真实自然图像方面受过培训,模拟噪音被人为腐蚀。相比之下,在科学应用方面,通常没有无噪音的地面真实图像。为了解决这一问题,我们提议了一个模拟的脱音框架,在模拟图像方面对CNN进行了培训。我们测试了从传输电子显微镜(TEM)获得的数据框架,这是一个在材料科学、生物学和医学方面广泛应用的成像技术。SBD在模拟基准数据集和真实数据上大范围优于现有技术。除了淡化的图像外,SBD还生成了可能地图,以设想解译图像结构的结构与观察到的数据之间的协议。我们的结果揭示了从传输电子显性电子显像仪显像仪(TEM)中获得的数据框架的缺陷,在材料科学、生物学和医学学的精确度模型中,最终展示了S-S-firealalalalalal ladial laview 。