2023 IEEE Aerospace Conference 2023
DOI: 10.1109/aero55745.2023.10115863
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Unsupervised Multi-level Segmentation Framework for PolSAR Data using H-Alpha features and the Combined Edge- Region based segmentation

M. Abo Elenean,
A.T. Hafez,
A.K. Helmy
et al.
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“…The data obtained from PolSAR imagery are significant in various fields, including agriculture, forestry, environmental monitoring, and urban assessment. [2][3][4] SAR image classification has long been a popular research issue and is crucial to PolSAR image interpretation. Several PolSAR classifiers have been developed for performing classification tasks, such as the Wishart classifier, 5 decision trees, 6 K nearest neighbor, 7 and support vector machine (SVM).…”
Section: Introductionmentioning
confidence: 99%
“…The data obtained from PolSAR imagery are significant in various fields, including agriculture, forestry, environmental monitoring, and urban assessment. [2][3][4] SAR image classification has long been a popular research issue and is crucial to PolSAR image interpretation. Several PolSAR classifiers have been developed for performing classification tasks, such as the Wishart classifier, 5 decision trees, 6 K nearest neighbor, 7 and support vector machine (SVM).…”
Section: Introductionmentioning
confidence: 99%