Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools

Oil extraction and transportation may lead to small or large scale accidental spills, whether at sea or on land. Detecting these spills is a major problem that can be addressed by means of hyperspectral images and specific processing methods. In this work, several cases of onshore oil spills are stu...

Full description

Bibliographic Details
Main Authors: Véronique Achard, Pierre-Yves Foucher, Dominique Dubucq
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/5/1020
id doaj-835aae8614064d458dc4cb5f52feb206
record_format Article
spelling doaj-835aae8614064d458dc4cb5f52feb2062021-03-09T00:03:17ZengMDPI AGRemote Sensing2072-42922021-03-01131020102010.3390/rs13051020Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing ToolsVéronique Achard0Pierre-Yves Foucher1Dominique Dubucq2ONERA-DOTA, University of Toulouse, 2, Avenue Edouard Belin, FR-31055 Toulouse, FranceONERA-DOTA, University of Toulouse, 2, Avenue Edouard Belin, FR-31055 Toulouse, FranceTOTAL SE, Avenue Larribau, 64018 Pau, FranceOil extraction and transportation may lead to small or large scale accidental spills, whether at sea or on land. Detecting these spills is a major problem that can be addressed by means of hyperspectral images and specific processing methods. In this work, several cases of onshore oil spills are studied. First, a controlled experiment was carried out: four boxes containing soil or sand mixed with crude oil or gasoil were deployed on the ONERA site near Fauga, France, and were overflown by HySpex hyperspectral cameras. Owing to this controlled experiment, different detection strategies were developed and tested, with a particular focus on the most automated methods requiring the least supervision. The methods developed were then applied to two very different cases: mapping of the shoreline contaminated due to the explosion of the Deepwater Horizon (DWH) platform based on AVIRIS images (AVIRIS: Airborne Visible/InfraRed Imaging Spectrometer), and detection of a tar pit on a former oil exploration site. The detection strategy depends on the type of oil, light or heavy, recently or formerly spilled, and on the substrate. In the first case (controlled experiment), the proposed methods included spectral index calculations, anomaly detection and spectral unmixing. In the case of DWH, spectral indices were computed and the unmixing method was tested. Finally, to detect the tar pit, a strategy based on anomaly detection and spectral indices was applied. In all the cases studied, the proposed methods were successful in detecting and mapping the oil pollution.https://www.mdpi.com/2072-4292/13/5/1020hyperspectraloil spillautomatic detectionspectral unmixinghydrocarbon indices
collection DOAJ
language English
format Article
sources DOAJ
author Véronique Achard
Pierre-Yves Foucher
Dominique Dubucq
spellingShingle Véronique Achard
Pierre-Yves Foucher
Dominique Dubucq
Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
Remote Sensing
hyperspectral
oil spill
automatic detection
spectral unmixing
hydrocarbon indices
author_facet Véronique Achard
Pierre-Yves Foucher
Dominique Dubucq
author_sort Véronique Achard
title Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
title_short Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
title_full Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
title_fullStr Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
title_full_unstemmed Hydrocarbon Pollution Detection and Mapping Based on the Combination of Various Hyperspectral Imaging Processing Tools
title_sort hydrocarbon pollution detection and mapping based on the combination of various hyperspectral imaging processing tools
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-03-01
description Oil extraction and transportation may lead to small or large scale accidental spills, whether at sea or on land. Detecting these spills is a major problem that can be addressed by means of hyperspectral images and specific processing methods. In this work, several cases of onshore oil spills are studied. First, a controlled experiment was carried out: four boxes containing soil or sand mixed with crude oil or gasoil were deployed on the ONERA site near Fauga, France, and were overflown by HySpex hyperspectral cameras. Owing to this controlled experiment, different detection strategies were developed and tested, with a particular focus on the most automated methods requiring the least supervision. The methods developed were then applied to two very different cases: mapping of the shoreline contaminated due to the explosion of the Deepwater Horizon (DWH) platform based on AVIRIS images (AVIRIS: Airborne Visible/InfraRed Imaging Spectrometer), and detection of a tar pit on a former oil exploration site. The detection strategy depends on the type of oil, light or heavy, recently or formerly spilled, and on the substrate. In the first case (controlled experiment), the proposed methods included spectral index calculations, anomaly detection and spectral unmixing. In the case of DWH, spectral indices were computed and the unmixing method was tested. Finally, to detect the tar pit, a strategy based on anomaly detection and spectral indices was applied. In all the cases studied, the proposed methods were successful in detecting and mapping the oil pollution.
topic hyperspectral
oil spill
automatic detection
spectral unmixing
hydrocarbon indices
url https://www.mdpi.com/2072-4292/13/5/1020
work_keys_str_mv AT veroniqueachard hydrocarbonpollutiondetectionandmappingbasedonthecombinationofvarioushyperspectralimagingprocessingtools
AT pierreyvesfoucher hydrocarbonpollutiondetectionandmappingbasedonthecombinationofvarioushyperspectralimagingprocessingtools
AT dominiquedubucq hydrocarbonpollutiondetectionandmappingbasedonthecombinationofvarioushyperspectralimagingprocessingtools
_version_ 1724228458600464384