Surface Water Body Detection in Polarimetric SAR Data Using Contextual Complex Wishart Classification
Autor: | Elham Goumehei, Valentyn A. Tolpekin, Alfred Stein, Wanglin Yan |
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Přispěvatelé: | Department of Earth Observation Science, Faculty of Geo-Information Science and Earth Observation, UT-I-ITC-ACQUAL |
Rok vydání: | 2019 |
Předmět: |
Wishart distribution
010504 meteorology & atmospheric sciences Computer science 0208 environmental biotechnology UT-Hybrid-D 02 engineering and technology 01 natural sciences Speckle pattern Single Look Complex (SLC) SAR images Median filter 0105 earth and related environmental sciences Water Science and Technology Complex data type complex Wishart Markov Random Fields (WMRF) Random field Markov random field Markov chain business.industry surface water detection Pattern recognition Thresholding 020801 environmental engineering ITC-ISI-JOURNAL-ARTICLE supervised contextual classification model Artificial intelligence ITC-GOLD business |
Zdroj: | Water resources research, 55(8):025192, 7047-7059. Wiley-Blackwell |
ISSN: | 1944-7973 0043-1397 |
DOI: | 10.1029/2019wr025192 |
Popis: | Detection of surface water from satellite images is important for water management purposes like for mapping flood extents, inundation dynamics, and water resources distributions. In this research, we introduce a supervised contextual classification model to detect surface water bodies from polarimetric Synthetic Aperture Radar (SAR) data. A complex Wishart Markov Random Field (WMRF) combines Markov Random Fields with the complex Wishart distribution. It is applied on Single Look Complex Sentinel 1 data. Using Markov Random Fields, we utilize the geometry of surface water to remove speckle from SAR images. Results were compared with the Wishart Maximum Likelihood Classification (WMLC), the Gaussian Maximum Likelihood Classification, and a median filter followed by thresholding. Experiments demonstrate that the statistical representation of data using the Wishart distribution improves the F‐score to 0.95 for WMRF, while it is 0.67, 0.88, and 0.91 for Gaussian Maximum Likelihood Classification, WMLC, and thresholding, respectively. The main improvement in the precision increases from 0.80 and 0.86 for WMLC and thresholding to 0.96 for WMRF. The WMRF model accurately distinguishes classes that have a similar backscatter, like water and bare soil. Hence, the high accuracy of the proposed WMRF model is a result of its robustness for water detection from Single Look Complex data. We conclude that the proposed model is a great improvement on existing methods for the detection of calm surface water bodies. |
Databáze: | OpenAIRE |
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