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Original Articles

Assessment of SAR speckle filters in the context of object-based image analysis

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Pages 150-159 | Received 11 Aug 2015, Accepted 26 Oct 2015, Published online: 02 Dec 2015
 

ABSTRACT

The initial step in most object-based classification methodologies is the application of a segmentation algorithm to define objects. In the context of synthetic aperture radar (SAR) image analysis, the presence of speckle noise might hamper the segmentation quality. The aim of this study is to assess the segmentation performance of SAR images when no filter or different filters are applied before segmentation. In particular, the performance of the mean-shift segmentation algorithm combined with different adaptive and non-adaptive filters is assessed based on both synthetic and natural SAR images. Studied filters include the non-adaptive Boxcar filter and four adaptive filters: the well-known Refined Lee filter and three recently proposed non-local filters differing, in particular, in their dissimilarity criteria: the Hellinger and the Kullback–Leibler filters are based on stochastic distances, whereas the NL-SAR filter is based on the generalized likelihood ratio. Two measures were used for quality assessment: -index and -index. Over-segmentation was assessed by the -index, the ratio of the resulting number of segments to the number of connected components of the ground-truth classes. The accuracy of the best possible classification given on the segmentation result was assessed with ground truth information by maximizing the -index. A Monte Carlo experiment conducted on synthetic images shows that the quality measures significantly differ for the applied filters. Our results indicate that the use of an adaptive filter improves the performance of the segmentation. In particular, the combination of the mean-shift segmentation algorithm with the NL-SAR filter gives the best results and the resulting process is less sensitive to variations in the mean-shift operational parameters than when applying other filters or no filter. The results obtained may help improve the reliability of land-cover classification analyses based on an object-based approach on SAR data.

Acknowledgements

Cosmo-SkyMed imagery was acquired through a project with Agenzia Spaziale Italiana and ALOS/PALSAR-1 imagery through an agreement with Comisión Nacional de Actividades Espaciales (CONAE, Argentina). We thank Laura San Martín for her help in ground truth mapping and Alejandro Frery for his valuable comments on a previous version of this manuscript.

ORCID

N. S. Morandeira http://orcid.org/0000-0003-3674-2981

Additional information

Funding

This work was funded by the ANPCyT [PICTO-CIN 22, PICT 2012-2403 and PICT 2014-0824].

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