Abstract

Rapid, efficient and reproducible drillcore logging is fundamental in mineral exploration. Drillcore mapping has evolved rapidly in the recent decade, especially with the advances in hyperspectral spectral imaging. A wide range of imaging sensors is now available, providing rapidly increasing spectral as well as spatial resolution and coverage. However, the fusion of data acquired with multiple sensors is challenging and usually not conducted operationally. We propose an innovative solution based on the recent developments made in machine learning to integrate such multi-sensor datasets. Image feature extraction using orthogonal total variation component analysis enables a strong reduction in dimensionality and memory size of each input dataset, while maintaining the majority of its spatial and spectral information. This is in particular advantageous for sensors with very high spatial and/or spectral resolution, which are otherwise difficult to jointly process due to their large data memory requirements during classification. The extracted features are not only bound to absorption features but recognize specific and relevant spatial or spectral patterns. We exemplify the workflow with data acquired with five commercially available hyperspectral sensors and a pair of RGB cameras. The robust and efficient spectral-spatial procedure is evaluated on a representative set of geological samples. We validate the process with independent and detailed mineralogical and spectral data. The suggested workflow provides a versatile solution for the integration of multi-source hyperspectral data in a diversity of geological applications. In this study, we show a straight-forward integration of visible/near-infrared (VNIR), short-wave infrared (SWIR) and long-wave infrared (LWIR) data for sensors with highly different spatial and spectral resolution that greatly improves drillcore mapping.

Highlights

  • The usage of spectroscopic information for the evaluation, classification, and sorting of large amounts of material is an established approach in industry and mining

  • Several hyperspectral sensors were used in the laboratory to verify the capability of the VNIR, short-wave infrared (SWIR), and long-wave infrared (LWIR) spectral ranges in characterizing the analyzed geological samples

  • The best co-registration results are achieved if the spectral range or the spatial resolution of the base and the dataset to register are comparable, which can be used to retrieve faster and more reliable matching results

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Summary

Introduction

The usage of spectroscopic information for the evaluation, classification, and sorting of large amounts of material is an established approach in industry and mining. Cost-efficiency, and reliability are crucial, the measurement setups are usually simple and highly adapted to a specific sorting problem. A high spectral resolution over a large spectral range. Sensors 2019, 19, 2787 is not needed such that the acquired dataset can be limited to a few spectral bands. Hyperspectral solutions exist, but are usually focused on the ultraviolet (UV), visible/near-infrared (VNIR) or lower short-wave infrared (SWIR) range of the electromagnetic spectrum. Commercial sensor systems are available by several companies, such as LLA Instruments GmbH & Co.KG, Perception Park GmbH, Spectral Imaging Ltd. Commercial sensor systems are available by several companies, such as LLA Instruments GmbH & Co.KG, Perception Park GmbH, Spectral Imaging Ltd. (Specim), and BK Instruments Inc

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