Litcius/Paper detail

Automatic drift compensation for nanoscale imaging using feature point matching

Zhuo Diao, Keiichi Ueda, Linfeng Hou, Hayato Yamashita, Óscar Custance, Masayuki Abe

2023Applied Physics Letters17 citationsDOI

Abstract

An implementation of drift compensation for imaging at the nanoscale is presented. The method is based on computer vision techniques and hence applicable to any microscope that generates images through a computer interface. The algorithm extracts and matches pairs of feature points from consecutive images to compute and compensate for probe–sample misalignments over time. The protocol also applies selection rules that enable it to withstand significant changes in image contrast. We demonstrate our fully automatic implementation by continuously imaging the same area of a Si(100) surface at the atomic scale with scanning probe microscopy over a period of 25 h at room temperature, showing that the method is robust even under the presence of non-linear drift or spontaneous changes of the probe apex. We apply our method to study the movement of pairs of tin atoms confined within a half-unit cell of the Si(111)-(7 × 7) surface and estimate the energy barrier for their diffusion at room temperature.

Topics & Concepts

MicroscopeNanoscopic scaleFeature (linguistics)Compensation (psychology)Computer scienceArtificial intelligenceSample (material)Computer visionMaterials scienceMatching (statistics)Interface (matter)OpticsMicroscopyDiffusionPhysicsNanotechnologyMathematicsPsychologyPsychoanalysisMaximum bubble pressure methodBubbleParallel computingLinguisticsStatisticsPhilosophyThermodynamicsForce Microscopy Techniques and ApplicationsAdvanced Electron Microscopy Techniques and ApplicationsSurface and Thin Film Phenomena
Automatic drift compensation for nanoscale imaging using feature point matching | Litcius