Abstract Crystallographic defects can now be routinely imaged at atomic resolution with aberration-corrected scanning transmission electron microscopy (STEM) at high speed, with the potential for vast volumes of data to be acquired in relatively short times or through autonomous experiments that can continue over very long periods. Automatic detection and classification of defects in the STEM images are needed in order to handle the data in an efficient way. However, like many other tasks related to object detection and identification in artificial intelligence, it is challenging to detect and identify defects from STEM images. Furthermore, it is difficult to deal with crystal structures that have many atoms and low symmetries. Previous met...
International audienceThis work revises the concept of defects in crystalline solids and proposes a ...
Atom segmentation and localization, noise reduction and deblurring of atomic-resolution scanning tra...
Deep Learning approaches have revolutionized in the past decade the field of Computer Vision and, as...
Controlling crystalline material defects is crucial, as they affect properties of the material that ...
This dataset accompanies the paper titled Defect detection in atomic-resolution images via unsupervi...
This paper addresses the problem of defect segmentation in semiconductor manufacturing. The input of...
Scanning transmission electron microscopy (STEM) is an indispensable tool for atomic-resolution stru...
Nanoproducts represent a potential growing sector and nanofibrous materials are widely requested in ...
Point defects often appear in two-dimensional (2D) materials and are mostly correlated with physical...
Computational methods and machine learning algorithms for automatic information extraction are cruci...
Modern scanning transmission electron microscopes (STEM) provide atomic resolution images of inorgan...
We present an unsupervised machine learning approach for segmentation of static and dynamic atomic-r...
© 2021 The Authors. Advanced Science published by Wiley-VCH GmbHAtomic dopants and defects play a cr...
This is the image dataset and model used to produce the results reported in the following publicatio...
Abstract Atomic dopants and defects play a crucial role in creating new functionalities in 2D transi...
International audienceThis work revises the concept of defects in crystalline solids and proposes a ...
Atom segmentation and localization, noise reduction and deblurring of atomic-resolution scanning tra...
Deep Learning approaches have revolutionized in the past decade the field of Computer Vision and, as...
Controlling crystalline material defects is crucial, as they affect properties of the material that ...
This dataset accompanies the paper titled Defect detection in atomic-resolution images via unsupervi...
This paper addresses the problem of defect segmentation in semiconductor manufacturing. The input of...
Scanning transmission electron microscopy (STEM) is an indispensable tool for atomic-resolution stru...
Nanoproducts represent a potential growing sector and nanofibrous materials are widely requested in ...
Point defects often appear in two-dimensional (2D) materials and are mostly correlated with physical...
Computational methods and machine learning algorithms for automatic information extraction are cruci...
Modern scanning transmission electron microscopes (STEM) provide atomic resolution images of inorgan...
We present an unsupervised machine learning approach for segmentation of static and dynamic atomic-r...
© 2021 The Authors. Advanced Science published by Wiley-VCH GmbHAtomic dopants and defects play a cr...
This is the image dataset and model used to produce the results reported in the following publicatio...
Abstract Atomic dopants and defects play a crucial role in creating new functionalities in 2D transi...
International audienceThis work revises the concept of defects in crystalline solids and proposes a ...
Atom segmentation and localization, noise reduction and deblurring of atomic-resolution scanning tra...
Deep Learning approaches have revolutionized in the past decade the field of Computer Vision and, as...