Detection of melt ponds on sea ice in the Chukchi Sea in summer season using TerraSAR-X dual-polarization data
Cited 0 time in
Cited 0 time in
-
Title
-
Detection of melt ponds on sea ice in the Chukchi Sea in summer season using TerraSAR-X dual-polarization data
-
Other Titles
-
Detection of melt ponds on sea ice in the Chukchi Sea in summer season using TerraSAR-X dual-polarization data
-
Authors
-
Kim, Miae
Sim, Seongmun
Im, Jungho
Han, Hyangsun
-
Issue Date
-
2015
-
Citation
-
Kim, Miae, et al. 2015. Detection of melt ponds on sea ice in the Chukchi Sea in summer season using TerraSAR-X dual-polarization data. 4th Forum for Arctic Modeling and Observational Synthesis School and Meeting. 미국 메사추세츠, Cape Codder Resort and Spa. 2015.11.03~2015.11.05.
-
Abstract
-
As a prevalent phenomenon in the Arctic winter season, melt ponds have a significant influence on climate change by absorbing incoming solar radiation and changing the melting rate of sea ice. Detection of melt ponds can help us better understand the interaction between sea ice and climate. In this study, melt pond classification models were developed using the TerraSAR-X dual-polarization data and two machine learning methods including decision trees (DT) and random forest (RF). Reference data of melt ponds, sea ice, and open water were extracted from the airborne SAR images with spatial resolution of 0.6 m through visual interpretation. A total of 8 polarimetric parameters such as HH and VV backscattering coefficients, co-polarization ratio, co-polarization phase difference, co-polarization correlation coefficient, alpha angle, entropy, and anisotropy from the TerraSAR-X dual-polarization data were used as input variables in the models. Due to the similarity of the polarimetric signature between melt ponds and open water, two spatial texture metrics such as average and standard deviation of the polarimetric parameters were also used as input variables. The use of the texture features in the DT and RF models showed better performances for detection of melt ponds. The HH and VV backscattering coefficients and their average were considered as the most contributing variables to the classification in both models. Furthermore, the comparison of melt pond fraction and sea ice concentration for the RF-derived melt pond and reference maps showed a root mean square deviation of 2.4% and 7.0%, respectively. This result indicates that high-resolution dual-polarization SAR data can be utilized for the accurate monitoring of melt pond fraction at a local scale.
-
URI
-
https://repository.kopri.re.kr/handle/201206/7136
-
Conference Name
-
4th Forum for Arctic Modeling and Observational Synthesis School and Meeting
-
Conference Place
-
미국 메사추세츠, Cape Codder Resort and Spa
-
Conference Date
-
2015.11.03~2015.11.05
-
Type
-
Poster
-
Indexed
-
포스터
- Appears in Collections
- 2011-2016, Korea Polar Ocean in Rapid Transition (K-PORT) / Kang, Sung-Ho (PM11080; PM12020; PM13020; PM14040; PM14040; PM15040)
- Files in This Item
-
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.