Abstract

Abstract. A Markov Random Field (MRF) model accounting for the classification uncertainty using multisource satellite images and an adaptive fuzzy class mean vector is proposed in this study. The work also highlights the initialization of the class values for an MRF based classification for synthetic aperture radar (SAR) images using optical data. The model uses the contextual information from the optical image pixels and the SAR pixel intensity with corresponding fuzzy grade of memberships respectively, in the classification mechanism. Sub pixel class fractions estimated using Singular Value Decomposition (SVD) from the optical image initializes the class arrangement for the MRF process. Pair-site interactions of the pixels are used to model the prior energy from the initial class arrangement. Fuzzy class mean vector from the SAR intensity pixels is calculated using Fuzzy C-means (FCM) partitioning. Conditional probability for each class was determined by a Gamma distribution for the SAR image. Simulated annealing (SA) to minimize the global energy was executed using a logarithmic and power-law combined annealing schedule. Proposed technique was tested using an Advanced Land Observation Satellite (ALOS) phased array type L-band SAR (PALSAR) and Advanced Visible and Near-Infrared Radiometer-2 (AVNIR-2) data set over a disaster effected urban region in Japan. Proposed method and the conventional MRF results were evaluated with neural network (NN) and support vector machine (SVM) based classifications. The results suggest the possible integration of an adaptive fuzzy class mean vector and multisource data is promising for imprecise class discrimination using a MRF based classification.

Highlights

  • Urban areas occupy a very small region of the earth surface

  • Visual interpretation of the classified images interestingly suggests the improved ability of FMRF to classify the local water sources and the inundated farmland better than the Markov Random Field (MRF)

  • The MRF model proposed in this study use multisource data and adaptive fuzzy class mean vector for the synthetic aperture radar (SAR) intensity pixels to model the conditional energy using a Gamma distribution

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Summary

Introduction

The rapid change of the urban land-cover categories within a small distance resulting similar entities at different locations, majority of land-cover types being internally heterogeneous and intermediate conditions of the class boundaries make the urban landscape a complex and vague entity (Forster, 1983; Wang, 1990; Wood and Foody, 1993; Bastin et al, 2002; Fisher et al, 2006; Tang et al, 2007; Foody and Matur, 2006) Satellite missions with their global view over the earth surface provide useful and rapid information for urban mapping, map updating and urban change detection. As a result the use of multi-source satellite images is currently considered as one promising approach to improve the vague urban land cover classification accuracy (Weng , 2012)

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