Original microstructural data of altered rocks and reconstructions using generative adversarial networks (GANs)

Amiri, Hamed;

2022 || YoDa Data Repository, Utrecht University, Netherlands

We image two altered rock samples consisting of a meta-igneous and a serpentinite showing an isolated porous and fracture network, respectively. The rock samples are collected during previous visits to Swartberget, Norway in 2009 and Tønsberg, Norway in 2012. The objective is to employ a deep-learning-based model called generative adversarial network (GAN) to reconstruct statistically-equivalent microstructures. To evaluate the reconstruction accuracy, different polytope functions are calculated and compared in both original and reconstructed images. Compared with a common stochastic reconstruction method, our analysis shows that GAN is able to reconstruct more realistic microstructures. The data are organized into 12 folders: one containing original segmented images of rock samples, one with python codes used, and the other 10 folder containing data and individual figures used to create figures in the main publication.

Originally assigned keywords

Corresponding MSL vocabulary keywords

MSL enriched keywords

Originally assigned sub domains
  • microscopy and tomography
MSL enriched sub domains
  • microscopy and tomography
Source http://dx.doi.org/10.24416/UU01-ACSDR4
Source publisher YoDa Data Repository, Utrecht University, Netherlands
DOI 10.24416/UU01-ACSDR4
Authors
Contributors
Citation Amiri, H. (2022). Original microstructural data of altered rocks and reconstructions using generative adversarial networks (GANs) (Version 1.0) [Data set]. Utrecht University. https://doi.org/10.24416/UU01-ACSDR4
Collection period(s)
  • 2020-04-01 - 2022-02-25