2021
DOI: 10.1038/s41598-021-84499-w
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TEMImageNet training library and AtomSegNet deep-learning models for high-precision atom segmentation, localization, denoising, and deblurring of atomic-resolution images

Abstract: Atom segmentation and localization, noise reduction and deblurring of atomic-resolution scanning transmission electron microscopy (STEM) images with high precision and robustness is a challenging task. Although several conventional algorithms, such has thresholding, edge detection and clustering, can achieve reasonable performance in some predefined sceneries, they tend to fail when interferences from the background are strong and unpredictable. Particularly, for atomic-resolution STEM images, so far there is … Show more

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Cited by 89 publications
(48 citation statements)
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“…Based on this, this paper proposes a model for the segmentation of learning score sets. This model adds a global directional energy element to the LBF model, which exceeds the sensitivity of the LBF model in the original contour and improves the segmentation of the fuzzy image boundary model [ 15 , 16 ].…”
Section: Based On Deep Learning Medical Image Segmentation Tap and Cea Combined Detection Study On Thyroid Cancer Risk Prediction In Patimentioning
confidence: 99%
“…Based on this, this paper proposes a model for the segmentation of learning score sets. This model adds a global directional energy element to the LBF model, which exceeds the sensitivity of the LBF model in the original contour and improves the segmentation of the fuzzy image boundary model [ 15 , 16 ].…”
Section: Based On Deep Learning Medical Image Segmentation Tap and Cea Combined Detection Study On Thyroid Cancer Risk Prediction In Patimentioning
confidence: 99%
“…Convolutional neural networks (CNNs) achieve state-of-theart denoising performance on natural images (Zhang et al, 2017;Tian et al, 2019) and are an emerging tool in various fields of scientific imaging, for example, in fluorescence light microscopy (Belthangady & Royer, 2019;Zhang et al, 2019) and in medical diagnostics (Yang et al, 2017;Jifara et al, 2019). In electron microscopy, deep CNNs are rapidly being developed for denoising in a variety of applications, including structural biology (Buchholz et al, 2019;Bepler et al, 2020), semiconductor metrology (Chaudhary et al, 2019;Giannatou et al, 2019), and drift correction (Vasudevan & Jesse, 2019), among others (Ede & Beanland, 2019;Lee et al, 2020;Wang et al, 2020;Lin et al, 2021;Spurgeon et al, 2021), as highlighted in a recent review (Ede, 2020). CNNs trained for segmentation have also been used to locate the position of atomic columns (Lin et al, 2021) as well as to estimate their occupancy (Madsen et al, 2018) in relatively high SNR (S)TEM images (i.e., SNR = ∼10).…”
Section: Introductionmentioning
confidence: 99%
“…S9d). In order to further confirm the existence of Co and Te atoms, AtomSegNet App was used to conduct super-resolution processing and tracking of atomic features in AC-HAADF-STEM images 19,20 . The bright spots of uniform size can be observed in the atom detect image of Te SASs/N-C (Fig.…”
Section: Resultsmentioning
confidence: 99%