Scientific Reports (Dec 2020)

Autoencoder based blind source separation for photoacoustic resolution enhancement

  • Matan Benyamin,
  • Hadar Genish,
  • Ran Califa,
  • Lauren Wolbromsky,
  • Michal Ganani,
  • Zhen Wang,
  • Shuyun Zhou,
  • Zheng Xie,
  • Zeev Zalevsky

DOI
https://doi.org/10.1038/s41598-020-78310-5
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 7

Abstract

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Abstract Photoacoustics is a promising technique for in-depth imaging of biological tissues. However, the lateral resolution of photoacoustic imaging is limited by size of the optical excitation spot, and therefore by light diffraction and scattering. Several super-resolution approaches, among which methods based on localization of labels and particles, have been suggested, presenting promising but limited solutions. This work demonstrates a novel concept for extended-resolution imaging based on separation and localization of multiple sub-pixel absorbers, each characterized by a distinct acoustic response. Sparse autoencoder algorithm is used to blindly decompose the acoustic signal into its various sources and resolve sub-pixel features. This method can be used independently or as a combination with other super-resolution techniques to gain further resolution enhancement and may also be extended to other imaging schemes. In this paper, the general idea is presented in details and experimentally demonstrated.