Machine learning-based temporal mixture analysis of hyptertemporal Antarctic sea ice data
Cited 7 time in
Cited 6 time in
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Title
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Machine learning-based temporal mixture analysis of hyptertemporal Antarctic sea ice data
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Authors
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Chi, Junhwa
Kim, Hyun-cheol
Kang, Sung-Ho
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Subject
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Imaging Science & Photographic Technology
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Keywords
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Hyptertemporal data; Machine learning; Remote sensing; Sea ice concentration; Temporal mixture analysis; Unmixing; Remote Sensing
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Issue Date
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2015
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Citation
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Chi, Junhwa, Kim, Hyun-cheol, Kang, Sung-Ho. 2015. "Machine learning-based temporal mixture analysis of hyptertemporal Antarctic sea ice data". Remote Sensing Letters: 190-199.
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Abstract
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Hypertemporal image (HTI) is often used to exploit the seasonal characteristics
of environmental phenomena such as sea ice concentration
(SIC). However, it is difficult to analyse the long-term time series
acquired at high temporal frequencies and over extensive areas. This
study performed temporal mixture analysis (TMA), which is algebraically
similar to spectral mixture analysis (SMA), but occurs in the time
domain instead of the spectral domain. TMA was used to investigate
the temporal characteristics of Antarctic sea ice. Because endmember
(EM) selection is critical to the success of both SMA and TMA, it is
important to select proper EMs from large quantities of HTI. In this
study, amachine learning (ML) technique is incorporated in identifying
EMs without prior information to address the limitations of previous
research. A fully linear mixing model was then implemented in an
attempt to produce more robust and physically meaningful abundance
estimates. Experiments that quantitatively and qualitatively
evaluated the proposed approaches were conducted. A TMA of hightemporal-
dimensional data provides a unique summary of long-term
Antarctic sea ice and noise-whitened reconstruction images via inverse
processing. Furthermore, comparisons of regional sea ice fractions
from experimental results enhance the understanding of the overall
Antarctic sea ice changes.
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DOI
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http://dx.doi.org/10.1080/2150704X.2015.1121300
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Type
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Article
- Appears in Collections
- 2014-2016, SaTellite Remote Sensing on West Antarctic Ocean Research (STAR) (14-16) / Kim; Hyun-cheol (PE14040; PE15040; PE16040)
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