2024
DOI: 10.3390/jimaging10040075
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A Review on PolSAR Decompositions for Feature Extraction

Konstantinos Karachristos,
Georgia Koukiou,
Vassilis Anastassopoulos

Abstract: Feature extraction plays a pivotal role in processing remote sensing datasets, especially in the realm of fully polarimetric data. This review investigates a variety of polarimetric decomposition techniques aimed at extracting comprehensive information from polarimetric imagery. These techniques are categorized as coherent and non-coherent methods, depending on their assumptions about the distribution of information among polarimetric cells. The review explores well-established and innovative approaches in pol… Show more

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Cited by 2 publications
(2 citation statements)
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“…Our methodology involves a pixel-level correlated decision fusion, which enhances the accuracy and robustness of land cover classification. In reference [31], a multitude of decomposition methods are analyzed and presented that have been used to extract the biophysical scattering behavior of SAR data. However, in this work we utilized Pauli's decomposition components and land surface temperature (LST) as features to extract local decisions for each pixel, considering the unique information provided by each sensor.…”
Section: Discussionmentioning
confidence: 99%
“…Our methodology involves a pixel-level correlated decision fusion, which enhances the accuracy and robustness of land cover classification. In reference [31], a multitude of decomposition methods are analyzed and presented that have been used to extract the biophysical scattering behavior of SAR data. However, in this work we utilized Pauli's decomposition components and land surface temperature (LST) as features to extract local decisions for each pixel, considering the unique information provided by each sensor.…”
Section: Discussionmentioning
confidence: 99%
“…Feature selection is essential to achieve robust and high-precision estimation of forest AGB based on PolSAR data [43][44][45]. The data and features determine the upper limit of machine learning, while models and algorithms only approach this upper limit [46].…”
Section: Introductionmentioning
confidence: 99%