A multitude of applications in engineering, ore processing, mineral exploration, and environmental science require grain recognition and the counting of minerals. Typically, this task is performed manually with the drawback of monopolizing both time and resources. Moreover, it requires highly trained personnel with a wealth of knowledge and equipment, such as scanning electron microscopes and optical microscopes. Advances in machine learning and deep learning make it possible to envision the automation of many complex tasks in various fields of science at an accuracy equal to human performance, thereby, avoiding placing human resources into tedious and repetitive tasks, improving time efficiency, and lowering costs. Here, we develop deep-le...
The aim of this study is to show the artificial neural network (ANN) on classification of mineral ba...
A new method for automatic counting of etched fission tracks in minerals is described and presented ...
The study of the petrographic structure of medium- and high-rank coals is important from both a cogn...
A multitude of applications in engineering, ore processing, mineral exploration, and environmental s...
In the beneficiation of quartz sand, hydraulic classification is a primary way to obtain quartz prod...
Traditional grain size determination in materials characterization involves microscopy images and a ...
With the increasing application of steel materials, the metallographic analysis of steel has gained ...
This master’s thesis evaluates five existing Convolutional Neural Network (CNN) models for semantic ...
Artificial intelligence is a branch of computer science that attempts to understand the essence of i...
Mineral segmentation is an equally important and difficult task in the quantification of mineral com...
This work presents a deep learning based system for estimating the particle size distribution of two...
It is significant to identify rock-mineral microscopic images in geological engineering. The task of...
Morphometry (i.e., the quantitative determination of size and shape information) is an essential com...
Mineral image classification technology based on machine vision is an efficient system for ore sorti...
Since the breakthrough of deep learning in object classification in 2012, extraordinary achievements...
The aim of this study is to show the artificial neural network (ANN) on classification of mineral ba...
A new method for automatic counting of etched fission tracks in minerals is described and presented ...
The study of the petrographic structure of medium- and high-rank coals is important from both a cogn...
A multitude of applications in engineering, ore processing, mineral exploration, and environmental s...
In the beneficiation of quartz sand, hydraulic classification is a primary way to obtain quartz prod...
Traditional grain size determination in materials characterization involves microscopy images and a ...
With the increasing application of steel materials, the metallographic analysis of steel has gained ...
This master’s thesis evaluates five existing Convolutional Neural Network (CNN) models for semantic ...
Artificial intelligence is a branch of computer science that attempts to understand the essence of i...
Mineral segmentation is an equally important and difficult task in the quantification of mineral com...
This work presents a deep learning based system for estimating the particle size distribution of two...
It is significant to identify rock-mineral microscopic images in geological engineering. The task of...
Morphometry (i.e., the quantitative determination of size and shape information) is an essential com...
Mineral image classification technology based on machine vision is an efficient system for ore sorti...
Since the breakthrough of deep learning in object classification in 2012, extraordinary achievements...
The aim of this study is to show the artificial neural network (ANN) on classification of mineral ba...
A new method for automatic counting of etched fission tracks in minerals is described and presented ...
The study of the petrographic structure of medium- and high-rank coals is important from both a cogn...