Abstract

Abstract. For wide application of change detection with SAR imagery, current processing technologies and methods are mostly based on pixels. It is difficult for pixel-based technologies to utilize spatial characteristics of images and topological relations of objects. Object-oriented technology takes objects as processing unit, which takes advantage of the shape and texture information of image. It can greatly improve the efficiency and reliability of change detection. Recently, with the development of polarimetric synthetic aperture radar (PolSAR), more backscattering features on different polarization state can be available for usage of object-oriented change detection study. In this paper, the object-oriented strategy will be employed. Considering the fact that the different target or target's state behaves different backscattering characteristics dependent on polarization state, an object-oriented change detection method that based on weighted polarimetric scattering difference of PolSAR images is proposed. The method operates on the objects generated by generalized statistical region merging (GSRM) segmentation processing. The merit of GSRM method is that image segmentation is executed on polarimetric coherence matrix, which takes full advantages of polarimetric backscattering features. And then, the measurement of polarimetric scattering difference is constructed by combining the correlation of covariance matrix and the difference of scattering power. Through analysing the effects of the covariance matrix correlation and the scattering echo power difference on the polarimetric scattering difference, the weighted method is used to balance the influences caused by the two parts, so that more reasonable weights can be chosen to decrease the false alarm rate. The effectiveness of the algorithm that proposed in this letter is tested by detection of the growth of crops with two different temporal radarsat-2 fully PolSAR data. First, objects are produced by GSRM algorithm based on the coherent matrix in the pre-processing. Then, the corresponding patches are extracted in two temporal images to measure the differences of objects. To detect changes of patches, a difference map is created by means of weighted polarization scattering difference. Finally, the result of change detection can be obtained by threshold determining. The experiments show that this approach is feasible and effective, and a reasonable choice of weights can improve the detection accuracy significantly.

Highlights

  • Introductionpolarimetric synthetic aperture radar (PolSAR) (polarimetric Synthetic Aperture Radar) as the more advanced imaging radar can obtain the fully polarimetric information of targets

  • In recent years, polarimetric synthetic aperture radar (PolSAR) as the more advanced imaging radar can obtain the fully polarimetric information of targets

  • The unweighted polarimetric scattering difference is used to experiment. It turns out the false alarm rate is overly large leads to a decline in the overall accuracy

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Summary

Introduction

PolSAR (polarimetric Synthetic Aperture Radar) as the more advanced imaging radar can obtain the fully polarimetric information of targets. The objectoriented analysis can obtain a variety of additional spatial and textural information (Sun Xiaoxia, 2013). It is important for improving the accuracy of change detection. With the aim being to improve the efficiency and reliability of change detection, the polarimetric scattering information is used to measure the similarity of patches and distinguish the changes of images. In this paper, it will combine the object-oriented technology and fully PolSAR information to detect the changes of crop growth in different periods

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