# Super Resolution Convolutional Neural Network Models for Enhancing   Resolution of Rock Micro-CT Images

**Authors:** Ying Da Wang, Ryan Armstrong, Peyman Mostaghimi

arXiv: 1904.07470 · 2019-07-17

## TL;DR

This study applies super resolution CNN models to micro-CT images of rocks, significantly improving image quality and edge sharpness, and demonstrating benefits for noise reduction and segmentation in digital rock analysis.

## Contribution

It introduces the use of advanced SRCNN models for enhancing micro-CT rock images, showing improved quality over traditional methods and potential for integration into digital rock workflows.

## Key findings

- 3-5 dB increase in image quality over bicubic interpolation
- Edge sharpness fully recovered with minimal high-frequency noise loss
- Super resolution acts as a noise remover and improves segmentation

## Abstract

Single Image Super Resolution (SISR) techniques based on Super Resolution Convolutional Neural Networks (SRCNN) are applied to micro-computed tomography ({\mu}CT) images of sandstone and carbonate rocks. Digital rock imaging is limited by the capability of the scanning device resulting in trade-offs between resolution and field of view, and super resolution methods tested in this study aim to compensate for these limits. SRCNN models SR-Resnet, Enhanced Deep SR (EDSR), and Wide-Activation Deep SR (WDSR) are used on the Digital Rock Super Resolution 1 (DRSRD1) Dataset of 4x downsampled images, comprising of 2000 high resolution (800x800) raw micro-CT images of Bentheimer sandstone and Estaillades carbonate. The trained models are applied to the validation and test data within the dataset and show a 3-5 dB rise in image quality compared to bicubic interpolation, with all tested models performing within a 0.1 dB range. Difference maps indicate that edge sharpness is completely recovered in images within the scope of the trained model, with only high frequency noise related detail loss. We find that aside from generation of high-resolution images, a beneficial side effect of super resolution methods applied to synthetically downgraded images is the removal of image noise while recovering edgewise sharpness which is beneficial for the segmentation process. The model is also tested against real low-resolution images of Bentheimer rock with image augmentation to account for natural noise and blur. The SRCNN method is shown to act as a preconditioner for image segmentation under these circumstances which naturally leads to further future development and training of models that segment an image directly. Image restoration by SRCNN on the rock images is of significantly higher quality than traditional methods and suggests SRCNN methods are a viable processing step in a digital rock workflow.

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Source: https://tomesphere.com/paper/1904.07470