Artículo de revista
A robust stochastic approach to mineral hyperspectral analysis for geometallurgy
Fecha
2020Registro en:
Minerals 2020, 10, 1139
10.3390/min10121139
Autor
Egaña, Álvaro F.
Santibáñez Leal, Felipe A.
Vidal, Christian
Díaz, Gonzalo
Liberman, Sergio
Ehrenfeld, Alejandro
Institución
Resumen
Most mining companies have registered important amounts of drill core composite spectra
using different acquisition equipment and by following diverse protocols. These companies have
used classic spectrography based on the detection of absorption features to perform semi-quantitative
mineralogy. This methodology requires ideal laboratory conditions in order to obtain normalized
spectra to compare. However, the inherent variability of spectral features—due to environmental
conditions and geological context, among others—is unavoidable and needs to be managed.
This work presents a novel methodology for geometallurgical sample characterization consisting of a
heterogeneous, multi-pixel processing pipeline which addresses the effects of ambient conditions and
geological context variability to estimate critical geological and geometallurgical variables. It relies on
the assumptions that the acquisition of hyperspectral images is an inherently stochastic process and
that ore sample information is deployed in the whole spectrum. The proposed framework is basically
composed of: (a) a new hyperspectral image segmentation algorithm, (b) a preserving-information
dimensionality reduction scheme and (c) a stochastic hierarchical regression model. A set of
experiments considering white reference spectral characterization and geometallurgical variable
estimation is presented to show promising results for the proposed approach.