Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Mangrove Extraction from Compact Polarimetric Synthetic Aperture Radar Images Based on Optimal Feature Combinations

View through CrossRef
As a polarimetric synthetic aperture radar (SAR) mode capable of simultaneously acquiring abundant surface information and conducting large-width observations, compact polarimetric synthetic aperture radar (CP SAR) holds great promise for mangrove dynamics monitoring. Nevertheless, there have been no studies on mangrove identification using CP SAR. This study aims to explore the potential of C-band CP SAR for mangrove monitoring applications, with the objective of identifying the most effective CP SAR descriptors for mangrove discrimination. A systematic comparison of 52 well-known CP features is provided, utilizing CP SAR data derived from the reconstruction of C-band Gaofen-3 quad-polarimetric data. Among all the features, Shannon entropy (SE), a random polarimetric constituent (VB), Shannon entropy (SEI), and the Bragg backscattering constituent (VG) exhibited the best performance. By combining these four features, we designed three supervised classifiers—support vector machine (SVM), maximum likelihood (ML), and artificial neural network (ANN)—for comparative analysis experiments. The results demonstrated that the optimal polarimetric feature combination not only reduced the redundancy of polarimetric feature data but also enhanced overall accuracy. The highest accuracy of mangrove extraction reached 98.04%. Among the three classifiers, SVM outperformed the other classifiers in mangrove extraction, while ML achieved the highest overall classification accuracy.
Title: Mangrove Extraction from Compact Polarimetric Synthetic Aperture Radar Images Based on Optimal Feature Combinations
Description:
As a polarimetric synthetic aperture radar (SAR) mode capable of simultaneously acquiring abundant surface information and conducting large-width observations, compact polarimetric synthetic aperture radar (CP SAR) holds great promise for mangrove dynamics monitoring.
Nevertheless, there have been no studies on mangrove identification using CP SAR.
This study aims to explore the potential of C-band CP SAR for mangrove monitoring applications, with the objective of identifying the most effective CP SAR descriptors for mangrove discrimination.
A systematic comparison of 52 well-known CP features is provided, utilizing CP SAR data derived from the reconstruction of C-band Gaofen-3 quad-polarimetric data.
Among all the features, Shannon entropy (SE), a random polarimetric constituent (VB), Shannon entropy (SEI), and the Bragg backscattering constituent (VG) exhibited the best performance.
By combining these four features, we designed three supervised classifiers—support vector machine (SVM), maximum likelihood (ML), and artificial neural network (ANN)—for comparative analysis experiments.
The results demonstrated that the optimal polarimetric feature combination not only reduced the redundancy of polarimetric feature data but also enhanced overall accuracy.
The highest accuracy of mangrove extraction reached 98.
04%.
Among the three classifiers, SVM outperformed the other classifiers in mangrove extraction, while ML achieved the highest overall classification accuracy.

Related Results

STRATEGI PENGELOLAAN EKOSISTEM HUTAN MANGROVE DI NEGERI AMAHAI
STRATEGI PENGELOLAAN EKOSISTEM HUTAN MANGROVE DI NEGERI AMAHAI
Mangrove forest is a very productive and beneficial ecosystem. Mangrove forest resources in Amahai Village will be increasingly exploited along with the increasing population and e...
Studi Vegetasi Mangrove di Taman Edukasi Mangrove Kabupaten Purworejo, Jawa Tengah
Studi Vegetasi Mangrove di Taman Edukasi Mangrove Kabupaten Purworejo, Jawa Tengah
Taman Edukasi Mangrove Demang Gedi yang terletak di Desa Gedangan, Kecamatan Purwodadi, Kabupaten Purworejo merupakan salah satu kawasan wisata alam sekaligus lokasi rehabilitasi m...
STRUKTUR KOMUNITAS MANGROVE DI PULAU PEMAGARAN, KEPULAUAN SERIBU, DKI JAKARTA
STRUKTUR KOMUNITAS MANGROVE DI PULAU PEMAGARAN, KEPULAUAN SERIBU, DKI JAKARTA
Pengamatan mangrove di Pulau Pemagaran, Kepulauan Seribu mengambil lokasi stasiun pengamatan di bagian utara, timur, selatan, dan barat Pulau Pemagaran dengan substrat berupa pasir...
Nilai Ekonomi Ekosistem Mangrove Di Kawasan Pesisir Lantebung Kota Makassar
Nilai Ekonomi Ekosistem Mangrove Di Kawasan Pesisir Lantebung Kota Makassar
Penelitian nilai ekonomi ekosistem mangrove dilakukan di Kawasan Wisata Lantebung, Kota Makassar. Penelitian ini bertujuan untuk menghitung nilai ekonomi mangrove di Kawasan Wisata...
Gastropoda test family of Neritidae as bioindicator to health status of mangrove forest Pulau Tunda Serang Banten, Indonesia
Gastropoda test family of Neritidae as bioindicator to health status of mangrove forest Pulau Tunda Serang Banten, Indonesia
Uji gastropoda famili Neritidae terhadap habitatnya di ekosistem mangrove dilakukan di dua stasiun pengamatan di Pulau Tunda Serang Banten pada Januari 2014. Penelitian ini bertuju...
STUDI KERUANGAN DAN KELEMBAGAAN PENGELOLAAN EKOWISATA MANGROVE DI NEGERI AMAHAI, KABUPATEN MALUKU TENGAH
STUDI KERUANGAN DAN KELEMBAGAAN PENGELOLAAN EKOWISATA MANGROVE DI NEGERI AMAHAI, KABUPATEN MALUKU TENGAH
Ecotourism is a tourist activity that aims to conserve. In its implementation, institutions have a very important role for sustainable ecotourism management. This study aims to det...
The Moon as an Asteroid: Unlocking Surface Secrets with Atlas Polarimetry
The Moon as an Asteroid: Unlocking Surface Secrets with Atlas Polarimetry
IntroductionThe polarimetric properties of airless Solar System bodies provide invaluable insights into their surface characteristics. While extensively applied to asteroids, often...

Back to Top