Abstract

Abstract. Remotely sensed spectral imagery, geophysical (magnetic and gravity), and geodetic (elevation) data are useful in a variety of Earth science applications such as environmental monitoring and mineral exploration. Using these data with Machine Learning Algorithms (MLA), which are widely used in image analysis and statistical pattern recognition applications, may enhance preliminary geological mapping and interpretation. This approach contributes towards a rapid and objective means of geological mapping in contrast to conventional field expedition techniques. In this study, four supervised MLAs (naïve Bayes, k-nearest neighbour, random forest, and support vector machines) are compared in order to assess their performance for correctly identifying geological rocktypes in an area with complete ground validation information. Geological maps of the Sudbury region are used for calibration and validation. Percent of correct classifications was used as indicators of performance. Results show that random forest is the best approach. As expected, MLA performance improves with more calibration clusters, i.e. a more uniform distribution of calibration data over the study region. Performance is generally low, though geological trends that correspond to a ground validation map are visualized. Low performance may be the result of poor spectral images of bare rock which can be covered by vegetation or water. The distribution of calibration clusters and MLA input parameters affect the performance of the MLAs. Generally, performance improves with more uniform sampling, though this increases required computational effort and time. With the achievable performance levels in this study, the technique is useful in identifying regions of interest and identifying general rocktype trends. In particular, phase I geological site investigations will benefit from this approach and lead to the selection of sites for advanced surveys.

Highlights

  • There are many applications of remotely sensed imagery in Earth science applications such as environmental monitoring (Munyati, 2000), land use (Yuan et al, 2005), and mineral exploration (Hewson et al, 2006; Sabins, 1999)

  • Sensed data has been shown to be useful for geological mapping of alteration minerals and rocktypes (Massironi et al, 2008; Rowan and Mars, 2003)

  • The purpose of this paper is to investigate how the number of clusters and training parameters can be optimized to improve the performance of an Machine learning algorithms (MLA)

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Summary

Introduction

There are many applications of remotely sensed imagery in Earth science applications such as environmental monitoring (Munyati, 2000), land use (Yuan et al, 2005), and mineral exploration (Hewson et al, 2006; Sabins, 1999). As the volume and variety of data become increasingly available and useful, new obstacles arise, namely (1) manual interpretation cannot maintain the pace with the amount of incoming data and (2) manual photo interpretation is generally subjective and can be inconsistent among interpreters, especially with large datasets. This can be true for experts as well, as demonstrated in the Bond et al (2007) study of conceptual uncertainty. 3. The Sudbury Igneous Complex (SIC), which is a lopolith structure sitting in the Sudbury Basin that is noritic and granophyric in composition.

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