Abstract

Speckle filtering in synthetic aperture radar (SAR) and polarimetric SAR (PolSAR) images is indispensable before the extraction of the useful information. The minimum mean square error estimate of the filtered pixels conducted to the definition of a linear rule between the values of the filtered pixels and their variances. Hence, the filtered pixel for infinite number of looks (INL) is predicted by a linear regression of means and variances for various window sizes. In this article, the infinite number of looks prediction (INLP) filter is explored in details to emphasize its ability to reduce speckle and preserve the spatial details. Then, the linear regression rule has been adapted to PolSAR context in order to preserve the polarimetric information. The number of the processed pixels used in the linear regression is adjusted to the variability of the scene. This effort increased the filtering performances. The reduction of the correlation between the pixels which constitutes an additional filtering criterion is discussed. Compared to the initially applied filter, the results showed that the improved INLP filter increased in speckle reduction level, augmented the preservation of the spatial details, increased the spatial resolution, reduced the correlation between the pixels and better preserved the polarimetric information. Simulated, one-look and multilook real PolSAR data were used for validation.

Highlights

  • R EMOTE sensing imagery represents nowadays an important source of information for the analysis of the Earth’s surface

  • For Nmin =23, the samples used in the linear regression in classical infinite number of looks prediction (INLP) are X = (x25 x24 x23) i.e., 3 samples, independently the variability of scene

  • The performances of the INLP filter are studied for both strategies (i.e., Nmin = 23 and Nmin is adapted to the variability of the scene)

Read more

Summary

Introduction

R EMOTE sensing imagery represents nowadays an important source of information for the analysis of the Earth’s surface. The potentiality of synthetic aperture radar (SAR). Manuscript received December 14, 2020; revised February 4, 2021 and March 18, 2021; accepted March 30, 2021. Date of publication April 1, 2021; date of current version April 26, 2021. SAR data are affected by the speckle noise, caused by the coherent nature of the scattering mechanisms [1]. The presence of speckle noise affects human interpretation of the images as well as the accuracy of postprocessing, such as image classification [2]

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call