Deep Learning for EELS hyperspectral images unmixing -- using autoencoders

Autor: Brun, N., Lambert, G., Bocher, L.
Rok vydání: 2023
Předmět:
Druh dokumentu: Working Paper
Popis: Spatially resolved Electron Energy-Loss Spectroscopy (EELS) conducted in a Scanning Transmission Electron Microscope (STEM) enables the acquisition of hyperspectral images (HSIs). Spectral unmixing (SU) is the process of decomposing each spectrum of an HSI into a combination of representative spectra (endmembers) corresponding to compounds present in the sample along with their local proportions (abundances). SU is a complex task, and various methods have been developed in different communities using HSIs. However, none of these methods fully satisfy the STEM-EELS requirements. Recent advancements in remote sensing, which focus on Deep Learning techniques, have the potential to meet these requirements, particularly Autoencoders (AEs). In this study, the performance of Deep Learning methods using AE for SU is evaluated, and their results are compared with traditional methods. Synthetic HSIs have been created to quantitatively assess the outcomes of the unmixing process using specific metrics. The methods are subsequently applied to a series of experimental data. The findings demonstrate the promising potential of AE as a tool for STEM-EELS SU, marking a starting point for exploring more sophisticated Neural Networks.
Comment: 39 pages, 11 figures To be published in Journal of Spectral Imaging
Databáze: arXiv