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Multi-Resolution Data Fusion for Super-Resolution Electron Microscopy

机译:超分辨率电子显微镜的多分辨率数据融合

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Perhaps surprisingly, all electron microscopy (EM) data collected to date is less than a cubic millimeter - presenting a huge demand in the materials and biological sciences to image at greater speed and lower dosage, while maintaining resolution. Traditional EM imaging based on homogeneous raster scanning severely limits the volume of high-resolution data that can be collected, and presents a fundamental limitation to understanding physical processes such as material deformation and crack propagation. We introduce a multi-resolution data fusion (MDF) method for super-resolution computational EM. Our method combines innovative data acquisition with novel algorithmic techniques to dramatically improve the resolution/volume/speed trade-off. The key to our approach is to collect the entire sample at low resolution, while simultaneously collecting a small fraction of data at high resolution. The high-resolution measurements are then used to create a material-specific model that is used within the "plug-and-play" framework to dramatically improve resolution of the low-resolution data. We present results using FEI electron microscope data that demonstrate super-resolution factors of 4×-16×, while substantially maintaining high image quality and reducing dosage.
机译:也许令人惊讶的是,收集到迄今为止收集的电子显微镜(EM)数据小于立方毫米 - 在更大的速度和更低剂量的同时,在材料和生物科学中呈现巨大需求,同时保持速度和更低的剂量。基于均匀光栅扫描的传统EM成像严重限制了可以收集的高分辨率数据的体积,并对了解物理变形和裂纹扩展等物理过程提出了基本限制。我们介绍了一种用于超分辨率计算EM的多分辨率数据融合(MDF)方法。我们的方法将创新的数据采集与新颖的算法技术相结合,从而显着提高了分辨率/体积/速度折衷。我们方法的关键是以低分辨率收集整个样本,同时以高分辨率收集小数一小部分数据。然后,使用高分辨率测量来创建一种材料特定模型,该模型用于“即插即用”框架,以显着提高低分辨率数据的分辨率。我们使用FEI电子显微镜数据的结果显示4×-16×的超分辨率因子,同时大大保持高图像质量和减少剂量。

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