One of the largest obstacles facing scanning probe microscopy is the constant need to correct flaws in the scanning probe in situ. This is currently a manual, time-consuming process that would benefit greatly from automation. Here, we introduce a convolutional neural network protocol that enables automated recognition of a variety of desirable and undesirable scanning tunneling tip states on both metal and nonmetal surfaces. By combining the best performing models into majority voting ensembles, we find that the desirable states of H:Si(100) can be distinguished with a mean precision of 0.89 and an average receiver-operator-characteristic curve area of 0.95. More generally, high and low-quality tips can be distinguished with a mean precisio...
Scanning probe microscopists generally do not rely on complete images to assess the quality of data ...
Reiss G, Vancea J, Wittmann H, Zweck J, Hoffmann H. Scanning tunneling microscopy on rough surfaces:...
Atomic-level qubits in silicon are attractive candidates for large-scale quantum computing; however,...
One of the largest obstacles facing scanning probe microscopy is the constant need to correct flaws ...
One of the largest obstacles facing scanning probe microscopy is the constant need to correct flaws ...
Enabling atomic-precision mapping and manipulation of surfaces, scanning probe microscopy requires c...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
Progress in computing capabilities has enhanced science in many ways. In recent years, various branc...
Dataset for associated publication. Abstract: Point defect identification in two-dimensional mater...
Individual atomic defects in 2D materials impact their macroscopic functionality. Correlating the in...
This work is comprised of two major sections. In the first section the authors develop multivariate ...
Scanning probe microscopy (SPM) allows us to directly measure the interactions between a probe and a...
Scanning tunneling spectroscopy (STS) provides a unique method for the investigation of the local su...
Individual atomic defects in 2D materials impact their macroscopic functionality. Correlating the in...
Machine learning, a subset of artificial intelligence is an emerging technology that enabled the c...
Scanning probe microscopists generally do not rely on complete images to assess the quality of data ...
Reiss G, Vancea J, Wittmann H, Zweck J, Hoffmann H. Scanning tunneling microscopy on rough surfaces:...
Atomic-level qubits in silicon are attractive candidates for large-scale quantum computing; however,...
One of the largest obstacles facing scanning probe microscopy is the constant need to correct flaws ...
One of the largest obstacles facing scanning probe microscopy is the constant need to correct flaws ...
Enabling atomic-precision mapping and manipulation of surfaces, scanning probe microscopy requires c...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
Progress in computing capabilities has enhanced science in many ways. In recent years, various branc...
Dataset for associated publication. Abstract: Point defect identification in two-dimensional mater...
Individual atomic defects in 2D materials impact their macroscopic functionality. Correlating the in...
This work is comprised of two major sections. In the first section the authors develop multivariate ...
Scanning probe microscopy (SPM) allows us to directly measure the interactions between a probe and a...
Scanning tunneling spectroscopy (STS) provides a unique method for the investigation of the local su...
Individual atomic defects in 2D materials impact their macroscopic functionality. Correlating the in...
Machine learning, a subset of artificial intelligence is an emerging technology that enabled the c...
Scanning probe microscopists generally do not rely on complete images to assess the quality of data ...
Reiss G, Vancea J, Wittmann H, Zweck J, Hoffmann H. Scanning tunneling microscopy on rough surfaces:...
Atomic-level qubits in silicon are attractive candidates for large-scale quantum computing; however,...