The increasing availability of complex multivariate data yielded by sensor technologies permits qualitative and quantitative data analysis for material characterization. Multivariate data are hard to understand by visual inspection and intuition. Thus, data-driven models are required to derive study-specific insights from large datasets. In the present study, a partial least squares regression (PLSR) model was used for the prediction of elemental concentrations using the mineralogical techniques mid-wave infrared (MWIR) and long-wave infrared (LWIR) combined with data fusion approaches. In achieving the study objectives, the usability of the individual MWIR and LWIR datasets for the prediction of the concentration of elements in a polymetal...
Partial least squares regression (PLSR) models, using mid-infrared (MIR) diffuse reflectance Fourier...
The mid-infrared spectral region (8-14μm wavelength) is emerging as a viable geologic remote sensing...
Merging hyperspectral data from optical and thermal ranges allows a wider variety of minerals to be ...
The increasing availability of complex multivariate data yielded by sensor technologies permits qual...
Accurate quantitative mineralogical data has significant implications in mining operations. However,...
Despite significant recent advancements in the sensor technologies, the use of sensors for raw mater...
Sensor technologies provide relevant information on the key geological attributes in mining. The int...
The rising demands for mined products lead to the extraction of materials in geologically complex re...
The increasing advances in sensor technology have resulted in greater availability of sensor data fo...
The study tested a data mining engine (PARACUDA®) to predict various soil attributes (BC, CEC, BS, p...
The aim of this study was to develop partial least squares (PLS) models to predict the concentration...
In this paper, we present an approach to extracting mineralogic information from thermal infrared (T...
The aim of this study was to develop partial least squares (PLS) models to predict the concentration...
Long-wave infrared (LWIR) spectra can be interpreted using a Random Forest machine learning approach...
The aim of this study was to develop partial least-squares (PLS) regression models using diffuse ref...
Partial least squares regression (PLSR) models, using mid-infrared (MIR) diffuse reflectance Fourier...
The mid-infrared spectral region (8-14μm wavelength) is emerging as a viable geologic remote sensing...
Merging hyperspectral data from optical and thermal ranges allows a wider variety of minerals to be ...
The increasing availability of complex multivariate data yielded by sensor technologies permits qual...
Accurate quantitative mineralogical data has significant implications in mining operations. However,...
Despite significant recent advancements in the sensor technologies, the use of sensors for raw mater...
Sensor technologies provide relevant information on the key geological attributes in mining. The int...
The rising demands for mined products lead to the extraction of materials in geologically complex re...
The increasing advances in sensor technology have resulted in greater availability of sensor data fo...
The study tested a data mining engine (PARACUDA®) to predict various soil attributes (BC, CEC, BS, p...
The aim of this study was to develop partial least squares (PLS) models to predict the concentration...
In this paper, we present an approach to extracting mineralogic information from thermal infrared (T...
The aim of this study was to develop partial least squares (PLS) models to predict the concentration...
Long-wave infrared (LWIR) spectra can be interpreted using a Random Forest machine learning approach...
The aim of this study was to develop partial least-squares (PLS) regression models using diffuse ref...
Partial least squares regression (PLSR) models, using mid-infrared (MIR) diffuse reflectance Fourier...
The mid-infrared spectral region (8-14μm wavelength) is emerging as a viable geologic remote sensing...
Merging hyperspectral data from optical and thermal ranges allows a wider variety of minerals to be ...