Abstract

Abstract. The interferometric coherence map derived from the cross-correlation of two complex registered synthetic aperture radar (SAR) images is the reflection of imaged targets. In many applications, it can act as an independent information source, or give additional information complementary to the intensity image. Specially, the statistical properties of the coherence are of great importance in land cover classification, segmentation and change detection. However, compared to the amount of work on the statistical characters of SAR intensity, there are quite fewer researches on interferometric SAR (InSAR) coherence statistics. And to our knowledge, all of the existing work that focuses on InSAR coherence statistics, models the coherence with Gaussian distribution with no discrimination on data resolutions or scene types. But the properties of coherence may be different for different data resolutions and scene types. In this paper, we investigate on the coherence statistics for high resolution data over urban areas, by making a comparison of the accuracy of several typical statistical models. Four typical land classes including buildings, trees, shadow and roads are selected as the representatives of urban areas. Firstly, several regions are selected from the coherence map manually and labelled with their corresponding classes respectively. Then we try to model the statistics of the pixel coherence for each type of region, with different models including Gaussian, Rayleigh, Weibull, Beta and Nakagami. Finally, we evaluate the model accuracy for each type of region. The experiments on TanDEM-X data show that the Beta model has a better performance than other distributions.

Highlights

  • Due to its independence on the solar illumination and all weather capability, synthetic aperture radar (SAR) has become a key remote sensing technique in the last decades

  • We try to model the statistics of the pixel coherence for each type of region, with several models including Gaussian, Rayleigh, Weibull, Beta and Nakagami

  • The experiments on TanDEM-X data show that the Beta model has a better performance than other distributions

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Summary

Introduction

Due to its independence on the solar illumination and all weather capability, synthetic aperture radar (SAR) has become a key remote sensing technique in the last decades. In the context of SAR data analysis, an important issue is the development of accurate models for the statistics of the data (Gabriele, 2006). There is a lot of work on the statistics of SAR intensity data and many different statistical models are proposed in the literature. Beta distribution is adopted to model the probability density function (pdf) of SAR intensity in 1990), the accuracy of Weibull distribution for modelling the intensity pdf is explored in Oliver, 1993) and it is found that the Weibull distribution is dedicated only to low heterogeneities. In (Tison, 2004), the Fisher distribution is proposed and it is proved to be a very good model to represent high resolution SAR intensity

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