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  4. High-resolution SAR and high-resolution optical data integration for sub-urban land-cover classification
 
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High-resolution SAR and high-resolution optical data integration for sub-urban land-cover classification

Author(s)
Dini, Luigi  
Rusmini, Marco
Candiani, Gabriele
Frassy, Federico
Subjects

Adaptive optics

COSMO-SkyMed

Data integration

GeoEye-1

Integrated optics

Land-cover/land-use

OBIA

Optical imaging

Optical sensors

Remote sensing

SAR data

Synthetic aperture ra...

data fusion

discrete wavelet tran...

fused data

geophysical image pro...

geophysical technique...

high-resolution COSMO...

high-resolution SAR d...

high-resolution multi...

high-resolution optic...

image fusion

land-use classificati...

maximum likelihood cl...

object-based approach...

object-oriented envir...

optical data

optical images

per-pixel method

pixel-based approach

standard pixel-based ...

sub-urban land-cover ...

vegetation mapping

Date Issued
2012-07-01
Abstract
This study shows a comparison between pixel-based and object-based approaches in data fusion of high-resolution multispectral GeoEye-1 imagery and high-resolution COSMO-SkyMed SAR data for land-cover/land-use classification. The per-pixel method consisted of a maximum likelihood classification of fused data based on discrete wavelet transform and a classification from optical images alone. Optical and SAR data were then integrated into an object-oriented environment with the addition of texture measurements from SAR and classified with a nearest neighbor approach. Results were compared with the classification of the GeoEye-1 data alone and the outcomes pointed out that per-pixel data fusion did not improve the classification accuracy, while the object-based data integration increased the overall accuracy from 73% to 89%. According to results, an object-based approach with the introduction of adjunctive information layers proved to be more performing than standard pixel-based methods in landcover/ land-use classification.
URI
https://hdl.handle.net/20.500.13025/3870
ISSN
2153-6996
DOI
10.1109/IGARSS.2012.6352492
URL
http://ieeexplore.ieee.org/lpdocs/epic03/wrapper.htm?arnumber=6352492
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