Memory-Efficient Super-Resolution of 3D Micro-CT Images Using Octree-Based GANs: Enhancing Resolution and Segmentation Accuracy
Evgeny Ugolkov, Xupeng He, Hyung Kwak, Hussein Hoteit

TL;DR
This paper introduces a memory-efficient 3D Octree-based GAN that significantly enhances micro-CT image resolution and segmentation accuracy, overcoming memory bottlenecks in volumetric deep learning.
Contribution
The novel use of Octree structures within a 3D GAN enables 16x super-resolution of micro-CT images with reduced memory consumption, improving geological imaging.
Findings
Achieved 16x super-resolution in 3D micro-CT images.
Improved segmentation accuracy of minerals in rock samples.
Validated on Berea sandstone with enhanced pore characterization.
Abstract
We present a memory-efficient algorithm for significantly enhancing the quality of segmented 3D micro-Computed Tomography (micro-CT) images of rocks using a generative model. The proposed model achieves a 16x increase in resolution and corrects inaccuracies in segmentation caused by the overlapping X-ray attenuation in micro-CT measurements across different minerals. The generative model employed is a 3D Octree-based convolutional Wasserstein generative adversarial network with gradient penalty. To address the challenge of high memory consumption inherent in standard 3D convolutional layers, we implemented an Octree structure within the 3D progressive growing generator model. This enabled the use of memory-efficient 3D Octree-based convolutional layers. The approach is pivotal in overcoming the long-standing memory bottleneck in volumetric deep learning, making it possible to reach 16x…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image Processing Techniques and Applications · Medical Imaging Techniques and Applications
