Land Cover Identification Using Polarimetric Sar Images
نویسنده
چکیده
Synthetic Aperture Radar (SAR) has been proven to be a powerful earth observation tool. Due to its sensitivity to vegetation, its orientations and various land-covers, SAR polarimetry has the potential to become a principle mean for crop and land-cover classification. A variety of polarimetric classification algorithms have been proposed in the literature for segmentation and/or classification of polarimetric SAR images into classes reflecting canonical scattering processes and/or some statistical properties. However, classification based on polarimetric data alone does not provide sufficient sensitivity for the separation of some classes such as forests. The use of other kinds of characteristics like texture provides better sensitivity for class separation. In this paper, we wish to address this issue, testing and comparing some polarimetric SAR classification algorithms using texture. Such an analysis will allow us to evaluate the importance of texture considering and to prove if the chosen texture model parameters describe, also, physical properties of the targets. Thus, the proposed approach is compared with the Wishart classifier showing interesting results. The test area used is the Oberpfaffenhofen in Munich and the SAR images are acquired in the P band. * Corresponding author.
منابع مشابه
Multitemporal Radarsat-2 Polarimetric Sar Data for Urban Land-cover Mapping
The objective of this research is to evaluate multi-temporal RADARSAT-2 polarimetric SAR data for urban land-cover classification using a novel classification scheme. Six-date RADARSAT-2 Polarimetric SAR data in both ascending and descending orbits were acquired during June to September 2008 in the rural-urban fringe of the Greater Toronto Area. The major land-cover types are builtup areas, roa...
متن کاملLand Cover Classification for Polarimetric SAR Images Based on Mixture Models
In this paper, two mixture models are proposed for modeling heterogeneous regions in single-look and multi-look polarimetric SAR images, along with their corresponding maximum likelihood classifiers for land cover classification. The classical Gaussian and Wishart models are suitable for modeling scattering vectors and covariance matrices from homogeneous regions, while their performance deteri...
متن کاملThe Extended Sub-look Analysis In Polarimetric SAR Data For Ship Detection
The monitoring of maritime areas with remote sensing is essential for security reasons and also for the conservation of environment. The synthetic aperture radar (SAR) can play an important role in this matter by considering the possibility of acquiring high-resolution images at nighttime and under cloud cover. Recently, the new approaches based on the sub-look analysis for preserving the infor...
متن کاملFirst Assessment of Polarimetric Images from Alos - Palsar: Check of Polarimetric Calibration and Assessment of Land - Cover Classification Potential
This study is a first assessment of fully polarimetric SAR data from the Advanced Land Observation Satellite (ALOS) – Phased Array type L-band Synthetic Aperture Radar (PALSAR) over the test-site of Oberpfaffenhofen in Germany. The polarimetric calibration is checked by using corner reflectors on the Oberpfaffenhofen test-site. Further, the fully polarimetric images are classified by using the ...
متن کاملLand Cover Classification Using E-sar Polarimetric Data
Different decomposition approaches have been proposed in order to analyse and interpret SAR polarimetric images. These are based either on the complex voltage reflection matrix, like Pauli, or on power reflection matrix, like the covariance or coherency matrix. They produce polarimetric parameters which are appropriate to retrieve information on the scattering process of the target. If the targ...
متن کامل