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First hyperspectral imaging survey of the deep seafloor: high-resolution mapping of manganese nodules.
Dumke, Ines, Nornes, S. M., Purser, A., Marcon, Y., Ludvigsen, M., Ellefmo, S. L., Johnsen, G. and Søreide, F. (2018) First hyperspectral imaging survey of the deep seafloor: high-resolution mapping of manganese nodules. Remote Sensing of Environment, 209 . pp. 19-30. DOI 10.1016/j.rse.2018.02.024.
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Abstract
Highlights:
• We present the first hyperspectral image data from the deep seafloor.
• The data were acquired with a new UHI in 4200 m water depth.
• Supervised classification is able to detect manganese nodules and fauna.
• The UHI is a promising tool for high-resolution seafloor exploration and monitoring.
Abstract:
Hyperspectral seafloor surveys using airborne or spaceborne sensors are generally limited to shallow coastal areas, due to the requirement for target illumination by sunlight. Deeper marine environments devoid of sunlight cannot be imaged by conventional hyperspectral imagers. Instead, a close-range, sunlight-independent hyperspectral survey approach is required. In this study, we present the first hyperspectral image data from the deep seafloor. The data were acquired in approximately 4200 m water depth using a new Underwater Hyperspectral Imager (UHI) mounted on a remotely operated vehicle (ROV). UHI data were recorded for 112 spectral bands between 378 nm and 805 nm, with a high spectral (4 nm) and spatial resolution (1 mm per image pixel). The study area was located in a manganese nodule field in the Peru Basin (SE Pacific), close to the DISCOL (DISturbance and reCOLonization) experimental area. To test whether underwater hyperspectral imaging can be used for detection and mapping of mineral deposits in potential deep-sea mining areas, we compared two supervised classification methods, the Support Vector Machine (SVM) and the Spectral Angle Mapper (SAM). The results show that SVM is superior to SAM and is able to accurately detect nodule surfaces. The UHI therefore represents a promising tool for high-resolution seafloor exploration and characterisation prior to resource exploitation.
Document Type: | Article |
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Keywords: | Hyperspectral imaging; Underwater Hyperspectral Imager (UHI); Manganese nodules; DISCOL; Supervised classification; Support Vector Machine; Spectral Angle Mapper |
Research affiliation: | MARUM HGF-AWI OceanRep > GEOMAR > FB4 Dynamics of the Ocean Floor > FB4-GDY Marine Geodynamics |
Refereed: | Yes |
Open Access Journal?: | No |
Publisher: | Elsevier |
Projects: | JPIO-MiningImpact |
Expeditions/Models/Experiments: | |
Date Deposited: | 08 Dec 2017 09:49 |
Last Modified: | 19 Mar 2021 10:45 |
URI: | https://oceanrep.geomar.de/id/eprint/40477 |
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