Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs

Principal Component Analysis (PCA) is a well-established technique in remote sensing for the visualization of multidimensional data. It reduces redundancy in multiband or multitemporal imagery, increases the signal-to-noise ratio and provides an opportunity to use multitemporal datasets for change d...

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Main Authors: Antonova, Sofia, Kääb, Andreas, Heim, Birgit, Langer, Moritz, Boike, Julia
Format: Dataset
Language:English
Published: PANGAEA 2016
Subjects:
Online Access:https://doi.pangaea.de/10.1594/PANGAEA.872142
https://doi.org/10.1594/PANGAEA.872142
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spelling ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.872142 2023-05-15T17:07:32+02:00 Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs Antonova, Sofia Kääb, Andreas Heim, Birgit Langer, Moritz Boike, Julia MEDIAN LATITUDE: 72.950000 * MEDIAN LONGITUDE: 126.550000 * SOUTH-BOUND LATITUDE: 72.000000 * WEST-BOUND LONGITUDE: 123.600000 * NORTH-BOUND LATITUDE: 73.900000 * EAST-BOUND LONGITUDE: 129.500000 2016-02-15 text/tab-separated-values, 10 data points https://doi.pangaea.de/10.1594/PANGAEA.872142 https://doi.org/10.1594/PANGAEA.872142 en eng PANGAEA https://doi.org/10.1594/PANGAEA.873554 Antonova, Sofia; Kääb, Andreas; Heim, Birgit; Langer, Moritz; Boike, Julia (2016): Spatio-temporal variability of X-band radar backscatter and coherence over the Lena River Delta, Siberia. Remote Sensing of Environment, 182, 169-191, https://doi.org/10.1016/j.rse.2016.05.003 https://doi.pangaea.de/10.1594/PANGAEA.872142 https://doi.org/10.1594/PANGAEA.872142 CC-BY-3.0: Creative Commons Attribution 3.0 Unported Access constraints: unrestricted info:eu-repo/semantics/openAccess CC-BY File content File format File name File size LenaDelta Lena Delta Siberia Russia Uniform resource locator/link to file Dataset 2016 ftpangaea https://doi.org/10.1594/PANGAEA.872142 https://doi.org/10.1594/PANGAEA.873554 https://doi.org/10.1016/j.rse.2016.05.003 2023-01-20T09:55:38Z Principal Component Analysis (PCA) is a well-established technique in remote sensing for the visualization of multidimensional data. It reduces redundancy in multiband or multitemporal imagery, increases the signal-to-noise ratio and provides an opportunity to use multitemporal datasets for change detection. PCA transforms the axes of multidimensional data in such way that the new axes (the principal components) account for variances within the data, with the first PC accounting for the largest variance and the last PC accounting for the smallest variance. In our study PCA of TerraSAR-X time stacks of backscatter intensity and interferometric coherence provided a good spatial overview of the essential information contained within the multiple time slices. The PC1 for both stacks showed the most common features of the contributing images and represented the means of the temporal stacks. The PC1 of the coherence stack accounted for 29% of the variance (or unique information) and mapped (i) water bodies (lakes and river), (ii) rocky outcrops, and (iii) the remaining land surfaces. The PC1 of the backscatter stack accounted for 35% of the variance and was contaminated by such effects as the presence or absence of lake ice and shadow/layover in the rocky outcrops region. Anomalies in seasonal patterns were demonstrated by the higher PCs. The PC2 of the backscatter stack accounted for 22% of the variance and delineated water bodies. The PC3 of backscatter stack accounted for only 4% of the variance in the dataset and represented the spatial variance in river ice conditions during spring. The PC2 of coherence, which accounted for 9.5% of the variance in the coherence stack, represented the spatially variable snow conditions in spring (snowmelt to the south and stable snow cover to the north). Dataset lena delta lena river Siberia PANGAEA - Data Publisher for Earth & Environmental Science ENVELOPE(123.600000,129.500000,73.900000,72.000000)
institution Open Polar
collection PANGAEA - Data Publisher for Earth & Environmental Science
op_collection_id ftpangaea
language English
topic File content
File format
File name
File size
LenaDelta
Lena Delta
Siberia
Russia
Uniform resource locator/link to file
spellingShingle File content
File format
File name
File size
LenaDelta
Lena Delta
Siberia
Russia
Uniform resource locator/link to file
Antonova, Sofia
Kääb, Andreas
Heim, Birgit
Langer, Moritz
Boike, Julia
Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
topic_facet File content
File format
File name
File size
LenaDelta
Lena Delta
Siberia
Russia
Uniform resource locator/link to file
description Principal Component Analysis (PCA) is a well-established technique in remote sensing for the visualization of multidimensional data. It reduces redundancy in multiband or multitemporal imagery, increases the signal-to-noise ratio and provides an opportunity to use multitemporal datasets for change detection. PCA transforms the axes of multidimensional data in such way that the new axes (the principal components) account for variances within the data, with the first PC accounting for the largest variance and the last PC accounting for the smallest variance. In our study PCA of TerraSAR-X time stacks of backscatter intensity and interferometric coherence provided a good spatial overview of the essential information contained within the multiple time slices. The PC1 for both stacks showed the most common features of the contributing images and represented the means of the temporal stacks. The PC1 of the coherence stack accounted for 29% of the variance (or unique information) and mapped (i) water bodies (lakes and river), (ii) rocky outcrops, and (iii) the remaining land surfaces. The PC1 of the backscatter stack accounted for 35% of the variance and was contaminated by such effects as the presence or absence of lake ice and shadow/layover in the rocky outcrops region. Anomalies in seasonal patterns were demonstrated by the higher PCs. The PC2 of the backscatter stack accounted for 22% of the variance and delineated water bodies. The PC3 of backscatter stack accounted for only 4% of the variance in the dataset and represented the spatial variance in river ice conditions during spring. The PC2 of coherence, which accounted for 9.5% of the variance in the coherence stack, represented the spatially variable snow conditions in spring (snowmelt to the south and stable snow cover to the north).
format Dataset
author Antonova, Sofia
Kääb, Andreas
Heim, Birgit
Langer, Moritz
Boike, Julia
author_facet Antonova, Sofia
Kääb, Andreas
Heim, Birgit
Langer, Moritz
Boike, Julia
author_sort Antonova, Sofia
title Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
title_short Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
title_full Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
title_fullStr Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
title_full_unstemmed Principal Component Analysis of TerraSAR-X backscatter and coherence stacks one year (2012-2013) in the Lena River Delta, links to GeoTIFFs
title_sort principal component analysis of terrasar-x backscatter and coherence stacks one year (2012-2013) in the lena river delta, links to geotiffs
publisher PANGAEA
publishDate 2016
url https://doi.pangaea.de/10.1594/PANGAEA.872142
https://doi.org/10.1594/PANGAEA.872142
op_coverage MEDIAN LATITUDE: 72.950000 * MEDIAN LONGITUDE: 126.550000 * SOUTH-BOUND LATITUDE: 72.000000 * WEST-BOUND LONGITUDE: 123.600000 * NORTH-BOUND LATITUDE: 73.900000 * EAST-BOUND LONGITUDE: 129.500000
long_lat ENVELOPE(123.600000,129.500000,73.900000,72.000000)
genre lena delta
lena river
Siberia
genre_facet lena delta
lena river
Siberia
op_relation https://doi.org/10.1594/PANGAEA.873554
Antonova, Sofia; Kääb, Andreas; Heim, Birgit; Langer, Moritz; Boike, Julia (2016): Spatio-temporal variability of X-band radar backscatter and coherence over the Lena River Delta, Siberia. Remote Sensing of Environment, 182, 169-191, https://doi.org/10.1016/j.rse.2016.05.003
https://doi.pangaea.de/10.1594/PANGAEA.872142
https://doi.org/10.1594/PANGAEA.872142
op_rights CC-BY-3.0: Creative Commons Attribution 3.0 Unported
Access constraints: unrestricted
info:eu-repo/semantics/openAccess
op_rightsnorm CC-BY
op_doi https://doi.org/10.1594/PANGAEA.872142
https://doi.org/10.1594/PANGAEA.873554
https://doi.org/10.1016/j.rse.2016.05.003
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