The development of scanning probe microscopy (SPM) has enabled unprecedented scientific discoveries through high-resolution imaging. Simulations and theoretical analysis of SPM images are equally important as obtaining experimental images since their comparisons provide fruitful understandings of the structures and physical properties of the investigated systems. So far, SPM image simulations are conventionally based on quantum mechanical theories, which can take several days in tasks of large-scale systems. Here, we have developed a scanning tunneling microscopy (STM) molecular image simulation and analysis framework based on a generative adversarial model, CycleGAN. It allows efficient translations between STM data and molecular models. Our CycleGAN-based framework introduces an approach for high-fidelity STM image simulation, outperforming traditional quantum mechanical methods in efficiency and accuracy. We envision that the integration of generative networks and high-resolution molecular imaging opens avenues in materials discovery relying on SPM technologies.
Keyphrases
- high resolution
- deep learning
- artificial intelligence
- convolutional neural network
- molecular dynamics
- big data
- machine learning
- mass spectrometry
- single molecule
- monte carlo
- high speed
- tandem mass spectrometry
- high throughput
- physical activity
- mental health
- optical coherence tomography
- small molecule
- electronic health record
- living cells
- virtual reality
- electron microscopy