COMP-PHDIS-NNLGSPJul 19, 2018

Dictionary Learning in Fourier Transform Scanning Tunneling Spectroscopy

arXiv:1807.10752v15 citations
Originality Highly original
AI Analysis

This addresses the problem of phase noise in Fourier analysis for researchers in microscopy and materials science, offering a novel method for analyzing aperiodic structures.

The authors tackled the challenge of extracting meaningful information from aperiodic microscopy images by developing a new algorithm based on nonconvex optimization that directly uncovers fundamental motifs, proving it allows for complete recovery of quasiparticle interference in a Co-doped iron arsenide superconductor.

Modern high-resolution microscopes, such as the scanning tunneling microscope, are commonly used to study specimens that have dense and aperiodic spatial structure. Extracting meaningful information from images obtained from such microscopes remains a formidable challenge. Fourier analysis is commonly used to analyze the underlying structure of fundamental motifs present in an image. However, the Fourier transform fundamentally suffers from severe phase noise when applied to aperiodic images. Here, we report the development of a new algorithm based on nonconvex optimization, applicable to any microscopy modality, that directly uncovers the fundamental motifs present in a real-space image. Apart from being quantitatively superior to traditional Fourier analysis, we show that this novel algorithm also uncovers phase sensitive information about the underlying motif structure. We demonstrate its usefulness by studying scanning tunneling microscopy images of a Co-doped iron arsenide superconductor and prove that the application of the algorithm allows for the complete recovery of quasiparticle interference in this material. Our phase sensitive quasiparticle interference imaging results indicate that the pairing symmetry in optimally doped NaFeAs is consistent with a sign-changing s+- order parameter.

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