Sparse coding-based multiframe superresolution for efficient synchrotron radiation microspectroscopy.

Oncology/Hematology Practice Management Geriatrics Neurology Radiology
Journal: Discover nano
Published Date:

Abstract

In nanostructure extraction, advanced techniques like synchrotron radiation and electron microscopy are often hindered by radiation damage and charging artifacts from long exposure times. This study presents a multiframe superresolution method using sparse coding to enhance synchrotron radiation microspectroscopy images. By reconstructing high-resolution images from multiple low-resolution ones, exposure time is minimized, reducing radiation effects, thermal drift, and sample degradation while preserving spatial resolution. Unlike deep learning-based superresolution methods, which overlook positional misalignment, our approach treats positional shifts as known control parameters, enhancing superresolution accuracy with a small, noisy dataset. Additionally, our sparse coding method learns an optimal dictionary tailored for nanostructure extraction, fine-tuning the SR process to the unique characteristics of the data, even with noise and limited samples. Applied to 3D nanoscale electron spectroscopy for chemical analysis (nano-ESCA) data, our method, utilizing a high-resolution dictionary learned from 3D nano-ESCA datasets, significantly improves image quality, preserving structural details. Unlike state-of-the-art deep learning techniques that require large datasets, our method excels with limited data, making it ideal for real-world scenarios with constrained sample sizes. High-resolution quality can be maintained while reducing the measurement time by over [Formula: see text], highlighting the efficiency of our approach. The results underscore the potential of this superresolution technique to not only advance synchrotron radiation microspectroscopy but also to be adapted for other high-resolution imaging modalities, such as electron microscopy. This approach offers enhanced image quality, reduced exposure times, and improved interpretability of scientific data, making it a versatile tool for overcoming the challenges associated with radiation damage and sample degradation in nanoscale imaging.

Authors

  • Yasuhiko Igarashi
    Institute of Engineering, Information and Systems, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki, 3058573, Japan. [email protected].
  • Naoka Nagamura
    Photoemission Group, National Institute for Materials Science, 3-13 Sakura, Tsukuba, Ibaraki, 3050003, Japan. [email protected].
  • Masahiro Sekine
    Institute of Engineering, Information and Systems, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki, 3058573, Japan.
  • Hirokazu Fukidome
    Research Institute of Electrical Communication, Tohoku University, 2-1-1 Katahira, Aobaku, Sendai, Miyagi, 9808577, Japan.
  • Hideitsu Hino
    Department of Statistical Modeling, The Institute of Statistical Mathematics, 10-3, Midori-cho, Tachikawa, Tokyo, 190-8562, Japan.
  • Masato Okada
    National Institute of Information and Communications Technology (NICT), Advanced ICT Research Institute, Kobe, Japan.

Keywords

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