A Novel Method for Evaluation of Ore Minerals Based on Optical Microscopy and Image Analysis: Preliminary Results
Articolo
Data di Pubblicazione:
2022
Abstract:
Natural or artificial light allows us to see and analyze matter with our eyes, which are the
first tools used in several experiments. In geosciences, particularly in mineralogy, light is used for
optical microscopy observations. Reflected and transmitted light applied to the study of ore deposits
can be useful to discriminate between gangue from precious phases. Knowledge of the structural
and morphological characteristics, combined with the quantitative evaluation of mineral abundance,
is fundamental for determining the grade of ore deposits. The accuracy and reliability of the
information are closely linked to the ability of the mineralogist, who more and more often uses
Scanning Electron technology and automated mineralogy systems to validate the observations or
solve complex mineralogy. While highly accurate, these methods are often prohibitively expensive.
The use of image analysis using standard algorithms and artificial intelligence, available as open
source, and commercial packages (such as ImageJ, Fiji or MATLAB), can provide advantages in fast,
cost-effective, and robust mineral analysis. Recently, the application of neural networks provided
increasingly effective image analysis and, among the different types of neural networks available
today, the self-organizing maps of Kohonen (SOM) seem to be among the most promising, given
their capacity to receive many images as inputs and reduce them to a low number of neuronal outputs
that represent all the input characteristics in a lower-dimensional space. In this work, we will
show the preliminary results of a new method based on SOM and the combined use of images acquired
in transmitted and reflected light to reconstruct false 3D surfaces, which were able to show
the presence of intergrow between gangue phases and precious minerals.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
optical microscopy; neural network; ore minerals; geomaterials; mining industry; image
analysis
Elenco autori:
Licia Santoro, Marco Lezzerini, Andrea Aquino, Giulia Domenighini, Stefano Pagnotta
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