• DocumentCode
    10744
  • Title

    Land Cover and Soil Type Mapping From Spaceborne PolSAR Data at L-Band With Probabilistic Neural Network

  • Author

    Antropov, Oleg ; Rauste, Yrjo ; Astola, Heikki ; Praks, Jaan ; Hame, Tuomas ; Hallikainen, Martti T.

  • Author_Institution
    Remote Sensing Team, VTT Tech. Res. Centre of Finland, Espoo, Finland
  • Volume
    52
  • Issue
    9
  • fYear
    2014
  • fDate
    Sept. 2014
  • Firstpage
    5256
  • Lastpage
    5270
  • Abstract
    This paper evaluates performance of fully polarimetric SAR (PolSAR) data in several land cover mapping studies in the boreal forest environment, taking advantage of the high canopy penetration capability at L-band. The studies included multiclass land cover mapping, forest-nonforest delineation, and classification of soil type under vegetation. PolSAR data used in the study were collected by the ALOS PALSAR sensor in 2006-2007 over a managed boreal forest site in Finland. A supervised classification approach using selected polarimetric features in the framework of probabilistic neural network (PNN) was adopted in the study. It has no assumptions about statistics of the polarimetric features, using nonparametric estimation of probability distribution functions instead. The PNN-based method improved classification accuracy compared with standard maximum-likelihood approach. The improvement was considerably strong for soil type mapping under vegetation, indicating notable non-Gaussian effects in the PolSAR data even at L-band. The classification performance was strongly dependent on seasonal conditions. The PolSAR feature data set was further modified to include a number of recently proposed polarimetric parameters (surface scattering fraction and scattering diversity), reducing the computational complexity at practically no loss in the classification accuracy. The best obtained accuracies of up to 82.6% in five-class land cover mapping and more than 90% in forest-nonforest mapping in wall-to-wall validation indicate suitability of PolSAR data for wide-area land cover and forest mapping.
  • Keywords
    land cover; maximum likelihood estimation; neural nets; nonparametric statistics; radar polarimetry; remote sensing by radar; soil; spaceborne radar; statistical distributions; synthetic aperture radar; terrain mapping; vegetation; vegetation mapping; ALOS PALSAR sensor; Finland; L-band; PolSAR feature data set; boreal forest environment; classification accuracy; classification performance; computational complexity; five-class land cover mapping; forest-nonforest delineation; forest-nonforest mapping; fully polarimetric SAR data; high canopy penetration capability; managed boreal forest site; multiclass land cover mapping; nonGaussian effects; nonparametric estimation; polarimetric features; polarimetric parameters; probabilistic neural network; probability distribution functions; scattering diversity; seasonal conditions; soil type classification; soil type mapping; spaceborne PolSAR data; standard maximum-likelihood approach; supervised classification approach; surface scattering fraction; vegetation; wall-to-wall validation; wide-area land cover mapping; Estimation; L-band; Neurons; Soil; Synthetic aperture radar; Training; Vegetation mapping; Boreal forest; classification; forestry; land cover; polarimetry; soil type; synthetic aperture radar (SAR);
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2013.2287712
  • Filename
    6678657