Deep Learning Supersampled Scanning Transmission Electron Microscopy

October 23, 2019 Β· Entered Twilight Β· πŸ› arXiv.org

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Repo contents: README.md, deconv.py, first_impl, magnifier-2.py, misc, stem-random-walk-nin-20-54.py, stem-random-walk-nin-20-68.py, stem-random-walk-nin-20-69.py

Authors Jeffrey M. Ede arXiv ID 1910.10467 Category eess.IV: Image & Video Processing Cross-listed cond-mat.mtrl-sci, cs.CV Citations 7 Venue arXiv.org Repository https://github.com/Jeffrey-Ede/DLSS-STEM ⭐ 2 Last Checked 2 months ago
Abstract
Compressed sensing can increase resolution, and decrease electron dose and scan time of electron microscope point-scan systems with minimal information loss. Building on a history of successful deep learning applications in compressed sensing, we have developed a two-stage multiscale generative adversarial network to supersample scanning transmission electron micrographs with point-scan coverage reduced to 1/16, 1/25, ..., 1/100 px. We propose a novel non-adversarial learning policy to train a unified generator for multiple coverages and introduce an auxiliary network to homogenize prioritization of training data with varied signal-to-noise ratios. This achieves root mean square errors of 3.23% and 4.54% at 1/16 px and 1/100 px coverage, respectively; within 1% of errors for networks trained for each coverage individually. Detailed error distributions are presented for unified and individual coverage generators, including errors per output pixel. In addition, we present a baseline one-stage network for a single coverage and investigate numerical precision for web serving. Source code, training data, and pretrained models are publicly available at https://github.com/Jeffrey-Ede/DLSS-STEM
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