Abstract
AbstractFrequency modulation (FM) atomic force microscopy (AFM) with metal tips functionalized with a CO molecule at the tip apex (referred as High-Resolution AFM, HR-AFM) has provided access to the internal structure of molecules with totally unprecedented resolution. We propose a model to extract the chemical information from those AFM images in order to achieve a complete identification of the imaged molecule. Our Conditional Generative Adversarial Network (CGAN) converts a stack of constant-height HR-AFM images at various tip-sample distances into a ball-and-stick depiction, where balls of different color and size represent the chemical species and sticks represent the bonds, providing complete information on the structure and chemical composition. The CGAN has been trained and tested with the QUAM-AFM data set, that contains simulated AFM images for a collection of 686000 organic molecules that include all the chemical species relevant in organic chemistry. Tests with a large set of theoretical images and few experimental examples demonstrate the accuracy and potential of our approach for molecular identification.
Funder
Ministry of Economy and Competitiveness | Agencia Estatal de Investigación
Consejería de Educación, Juventud y Deporte, Comunidad de Madrid
Publisher
Springer Science and Business Media LLC
Subject
Computer Science Applications,Mechanics of Materials,General Materials Science,Modeling and Simulation