A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic

Gossans are surficial deposits that form in host bedrock by the alteration of sulphides by acidic and oxidizing fluids. These deposits are typically a few meters to kilometers in size and they constitute important vectors to buried ore deposits. Hundreds of gossans have been mapped by field geologis...

Full description

Bibliographic Details
Main Authors: Étienne Clabaut, Myriam Lemelin, Mickaël Germain, Marie-Claude Williamson, Éloïse Brassard
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/19/3123
id doaj-1fad45b1919546f788b748e966a611c1
record_format Article
spelling doaj-1fad45b1919546f788b748e966a611c12020-11-25T03:22:18ZengMDPI AGRemote Sensing2072-42922020-09-01123123312310.3390/rs12193123A Deep Learning Approach to the Detection of Gossans in the Canadian ArcticÉtienne Clabaut0Myriam Lemelin1Mickaël Germain2Marie-Claude Williamson3Éloïse Brassard4Département de Géomatique Appliquée, Université de Sherbrooke, Sherbrooke, QC J1K 2R1, CanadaDépartement de Géomatique Appliquée, Université de Sherbrooke, Sherbrooke, QC J1K 2R1, CanadaDépartement de Géomatique Appliquée, Université de Sherbrooke, Sherbrooke, QC J1K 2R1, CanadaNatural Resources Canada, Ottawa, ON K1A 0E4, CanadaDépartement de Géomatique Appliquée, Université de Sherbrooke, Sherbrooke, QC J1K 2R1, CanadaGossans are surficial deposits that form in host bedrock by the alteration of sulphides by acidic and oxidizing fluids. These deposits are typically a few meters to kilometers in size and they constitute important vectors to buried ore deposits. Hundreds of gossans have been mapped by field geologists in sparsely vegetated areas of the Canadian Arctic. However, due to Canada’s vast northern landmass, it is highly probable that many existing occurrences have been missed. In contrast, a variety of remote sensing data has been acquired in recent years, allowing for a broader survey of gossans from orbit. These include band ratioing or methods based on principal component analysis. Spectrally, the 809 gossans used in this study show no significant difference from randomly placed points on the Landsat 8 imageries. To overcome this major issue, we propose a deep learning method based on convolutional neural networks and relying on geo big data (Landsat-8, Arctic digital elevation model lithological maps) that can be used for the detection of gossans. Its application in different regions in the Canadian Arctic shows great promise, with precisions reaching 77%. This first order approach could provide a useful precursor tool to identify gossans prior to more detailed surveys using hyperspectral imaging.https://www.mdpi.com/2072-4292/12/19/3123gossandeep learningconvolutional neural networkgeo big datamultispectralLandsat
collection DOAJ
language English
format Article
sources DOAJ
author Étienne Clabaut
Myriam Lemelin
Mickaël Germain
Marie-Claude Williamson
Éloïse Brassard
spellingShingle Étienne Clabaut
Myriam Lemelin
Mickaël Germain
Marie-Claude Williamson
Éloïse Brassard
A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
Remote Sensing
gossan
deep learning
convolutional neural network
geo big data
multispectral
Landsat
author_facet Étienne Clabaut
Myriam Lemelin
Mickaël Germain
Marie-Claude Williamson
Éloïse Brassard
author_sort Étienne Clabaut
title A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
title_short A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
title_full A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
title_fullStr A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
title_full_unstemmed A Deep Learning Approach to the Detection of Gossans in the Canadian Arctic
title_sort deep learning approach to the detection of gossans in the canadian arctic
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-09-01
description Gossans are surficial deposits that form in host bedrock by the alteration of sulphides by acidic and oxidizing fluids. These deposits are typically a few meters to kilometers in size and they constitute important vectors to buried ore deposits. Hundreds of gossans have been mapped by field geologists in sparsely vegetated areas of the Canadian Arctic. However, due to Canada’s vast northern landmass, it is highly probable that many existing occurrences have been missed. In contrast, a variety of remote sensing data has been acquired in recent years, allowing for a broader survey of gossans from orbit. These include band ratioing or methods based on principal component analysis. Spectrally, the 809 gossans used in this study show no significant difference from randomly placed points on the Landsat 8 imageries. To overcome this major issue, we propose a deep learning method based on convolutional neural networks and relying on geo big data (Landsat-8, Arctic digital elevation model lithological maps) that can be used for the detection of gossans. Its application in different regions in the Canadian Arctic shows great promise, with precisions reaching 77%. This first order approach could provide a useful precursor tool to identify gossans prior to more detailed surveys using hyperspectral imaging.
topic gossan
deep learning
convolutional neural network
geo big data
multispectral
Landsat
url https://www.mdpi.com/2072-4292/12/19/3123
work_keys_str_mv AT etienneclabaut adeeplearningapproachtothedetectionofgossansinthecanadianarctic
AT myriamlemelin adeeplearningapproachtothedetectionofgossansinthecanadianarctic
AT mickaelgermain adeeplearningapproachtothedetectionofgossansinthecanadianarctic
AT marieclaudewilliamson adeeplearningapproachtothedetectionofgossansinthecanadianarctic
AT eloisebrassard adeeplearningapproachtothedetectionofgossansinthecanadianarctic
AT etienneclabaut deeplearningapproachtothedetectionofgossansinthecanadianarctic
AT myriamlemelin deeplearningapproachtothedetectionofgossansinthecanadianarctic
AT mickaelgermain deeplearningapproachtothedetectionofgossansinthecanadianarctic
AT marieclaudewilliamson deeplearningapproachtothedetectionofgossansinthecanadianarctic
AT eloisebrassard deeplearningapproachtothedetectionofgossansinthecanadianarctic
_version_ 1724610011889401856