As deep learning (DL) gains popularity for its ability to make accurate predictions in various fields, its applications in geosciences are also on the rise. Many studies focus on achieving high accuracy in DL models by selecting models, developing more complex architectures, and tuning hyperparameters. However, the interpretability of these models, or the ability to understand how they make their predictions, is less frequently discussed. To address the challenge of high accuracy but low interpretability of DL models in geosciences, we study rock classification from thin-section photomicrographs of six types of sedimentary rocks, including quartz arenite, feldspathic arenite, lithic arenite, siltstone, oolitic packstone, and dolomite. These...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...
The concept of digital rock physics (DRP) is widely used in petroleum engineering and science. It is...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
Hyperspectral imaging has been applied in remote sensing amongst other disciplines, success in these...
In the geological survey, the recognition and classification of rock lithology are an important cont...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
AbstractThe lithology of underground formations can be determined using logging data, which is impor...
It is significant to identify rock-mineral microscopic images in geological engineering. The task of...
Digital Rock Analysis (DRA) has expanded our knowledge about natural phenomena in various geoscience...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...
The concept of digital rock physics (DRP) is widely used in petroleum engineering and science. It is...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
To make efficient use of image-based rock physics workflow, it is necessary to optimize different cr...
Hyperspectral imaging has been applied in remote sensing amongst other disciplines, success in these...
In the geological survey, the recognition and classification of rock lithology are an important cont...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
In the past few years, the use of Deep Learning in the petroleum industry has increased, especially ...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
AbstractThe lithology of underground formations can be determined using logging data, which is impor...
It is significant to identify rock-mineral microscopic images in geological engineering. The task of...
Digital Rock Analysis (DRA) has expanded our knowledge about natural phenomena in various geoscience...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...
The concept of digital rock physics (DRP) is widely used in petroleum engineering and science. It is...
This paper explores the experiment of Deep Learning method using Mask Region-Convolutional Neural Ne...