Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg

Multispectral and hyperspectral feature spaces are useful for a variety of remote sensing applications ranging from spectral mixture modeling to discrete thematic classification. In many of these applications, models are used to project the higher dimensional continuum of reflectances (or radiances)...

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Main Authors: Christopher Small (817318), Daniel Sousa (3569228)
Format: Still Image
Language:unknown
Published: 2022
Subjects:
EOF
Online Access:https://doi.org/10.3389/frsen.2021.793228.s002
id ftsmithonian:oai:figshare.com:article/19102508
record_format openpolar
spelling ftsmithonian:oai:figshare.com:article/19102508 2023-05-15T16:21:33+02:00 Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg Christopher Small (817318) Daniel Sousa (3569228) 2022-02-01T10:08:50Z https://doi.org/10.3389/frsen.2021.793228.s002 unknown https://figshare.com/articles/figure/Image1_Joint_Characterization_of_the_Cryospheric_Spectral_Feature_Space_jpg/19102508 doi:10.3389/frsen.2021.793228.s002 CC BY 4.0 CC-BY Physical Geography and Environmental Geoscience not elsewhere classified Earth Sciences not elsewhere classified Photogrammetry and Remote Sensing AVIRIS cryosphere hyperspectral manifold learning EOF Image Figure 2022 ftsmithonian https://doi.org/10.3389/frsen.2021.793228.s002 2022-02-07T16:58:54Z Multispectral and hyperspectral feature spaces are useful for a variety of remote sensing applications ranging from spectral mixture modeling to discrete thematic classification. In many of these applications, models are used to project the higher dimensional continuum of reflectances (or radiances) onto lower dimensional mappings of the image target’s physical properties or categorical composition. In such cases, characterization of the feature space dimensionality, geometry and topology can provide fundamental guidance for effective model design. Utility of this characterization, however, hinges on identification of appropriate basis vectors for the feature space. The objective of this study is to compare and contrast two fundamentally different approaches for identifying feature space basis vectors via dimensionality reduction. In so doing, we illustrate how these two approaches can be combined to render a joint characterization that reveals spectral properties not apparent using either approach alone. We use a diverse collection of AVIRIS-NG reflectance spectra of ice and snow to illustrate the utility of the joint characterization to facilitate both modeling and classification of snow and ice reflectance. Joint characterization is also shown to assist with interpretation of physical properties inferred from the spectra. Spectral feature spaces combining principal components (PCs) and t-distributed Stochastic Neighbor Embeddings (t-SNEs) provide both physically interpretable dimensions representing the global structure of cryospheric reflectance properties as well as local manifold structures revealing clustering not resolved within the global continuum. The joint characterization reveals distinct continua for snow-firn gradients on different parts of the Greenland Ice Sheet and multiple clusters of ice reflectance properties common to both glacier and sea ice in different locations. The clustering revealed in the t-SNE feature spaces, and extended to the joint characterization, distinguishes subtle differences in spectral curvature specific to different spatial locations within the snow accumulation zone, as well as BRDF effects related to view geometry. The ability of the PC + t-SNE joint characterization to produce a physically interpretable spectral feature space revealing global topology while preserving local manifold structures for cryospheric hyperspectra suggests that this type of characterization might be extended to the much higher dimensional hyperspectral feature space of all terrestrial land cover. Still Image glacier Greenland Ice Sheet Sea ice Unknown Greenland
institution Open Polar
collection Unknown
op_collection_id ftsmithonian
language unknown
topic Physical Geography and Environmental Geoscience not elsewhere classified
Earth Sciences not elsewhere classified
Photogrammetry and Remote Sensing
AVIRIS
cryosphere
hyperspectral
manifold learning
EOF
spellingShingle Physical Geography and Environmental Geoscience not elsewhere classified
Earth Sciences not elsewhere classified
Photogrammetry and Remote Sensing
AVIRIS
cryosphere
hyperspectral
manifold learning
EOF
Christopher Small (817318)
Daniel Sousa (3569228)
Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
topic_facet Physical Geography and Environmental Geoscience not elsewhere classified
Earth Sciences not elsewhere classified
Photogrammetry and Remote Sensing
AVIRIS
cryosphere
hyperspectral
manifold learning
EOF
description Multispectral and hyperspectral feature spaces are useful for a variety of remote sensing applications ranging from spectral mixture modeling to discrete thematic classification. In many of these applications, models are used to project the higher dimensional continuum of reflectances (or radiances) onto lower dimensional mappings of the image target’s physical properties or categorical composition. In such cases, characterization of the feature space dimensionality, geometry and topology can provide fundamental guidance for effective model design. Utility of this characterization, however, hinges on identification of appropriate basis vectors for the feature space. The objective of this study is to compare and contrast two fundamentally different approaches for identifying feature space basis vectors via dimensionality reduction. In so doing, we illustrate how these two approaches can be combined to render a joint characterization that reveals spectral properties not apparent using either approach alone. We use a diverse collection of AVIRIS-NG reflectance spectra of ice and snow to illustrate the utility of the joint characterization to facilitate both modeling and classification of snow and ice reflectance. Joint characterization is also shown to assist with interpretation of physical properties inferred from the spectra. Spectral feature spaces combining principal components (PCs) and t-distributed Stochastic Neighbor Embeddings (t-SNEs) provide both physically interpretable dimensions representing the global structure of cryospheric reflectance properties as well as local manifold structures revealing clustering not resolved within the global continuum. The joint characterization reveals distinct continua for snow-firn gradients on different parts of the Greenland Ice Sheet and multiple clusters of ice reflectance properties common to both glacier and sea ice in different locations. The clustering revealed in the t-SNE feature spaces, and extended to the joint characterization, distinguishes subtle differences in spectral curvature specific to different spatial locations within the snow accumulation zone, as well as BRDF effects related to view geometry. The ability of the PC + t-SNE joint characterization to produce a physically interpretable spectral feature space revealing global topology while preserving local manifold structures for cryospheric hyperspectra suggests that this type of characterization might be extended to the much higher dimensional hyperspectral feature space of all terrestrial land cover.
format Still Image
author Christopher Small (817318)
Daniel Sousa (3569228)
author_facet Christopher Small (817318)
Daniel Sousa (3569228)
author_sort Christopher Small (817318)
title Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
title_short Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
title_full Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
title_fullStr Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
title_full_unstemmed Image1_Joint Characterization of the Cryospheric Spectral Feature Space.jpg
title_sort image1_joint characterization of the cryospheric spectral feature space.jpg
publishDate 2022
url https://doi.org/10.3389/frsen.2021.793228.s002
geographic Greenland
geographic_facet Greenland
genre glacier
Greenland
Ice Sheet
Sea ice
genre_facet glacier
Greenland
Ice Sheet
Sea ice
op_relation https://figshare.com/articles/figure/Image1_Joint_Characterization_of_the_Cryospheric_Spectral_Feature_Space_jpg/19102508
doi:10.3389/frsen.2021.793228.s002
op_rights CC BY 4.0
op_rightsnorm CC-BY
op_doi https://doi.org/10.3389/frsen.2021.793228.s002
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