Guided SAR image despeckling with probabilistic non local weights

No Thumbnail Available

Date

2017

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier Ltd

Abstract

SAR images are generally corrupted by granular disturbances called speckle, which makes visual analysis and detail extraction a difficult task. Non Local despeckling techniques with probabilistic similarity has been a recent trend in SAR despeckling. To achieve effective speckle suppression without compromising detail preservation, we propose an improvement for the existing Generalized Guided Filter with Bayesian Non-Local Means (GGF-BNLM) method. The proposed method (Guided SAR Image Despeckling with Probabilistic Non Local Weights) replaces parametric constants based on heuristics in GGF-BNLM method with dynamically derived values based on the image statistics for weight computation. Proposed changes make GGF-BNLM method adaptive and as a result, significant improvement is achieved in terms of performance. Experimental analysis on SAR images shows excellent speckle reduction without compromising feature preservation when compared to GGF-BNLM method. Results are also compared with other state-of-the-art and classic SAR depseckling techniques to demonstrate the effectiveness of the proposed method. © 2017 Elsevier Ltd

Description

Keywords

Heuristic methods, Image analysis, Image denoising, Speckle, Synthetic aperture radar, De-noising, Experimental analysis, Feature preservation, Guided filtering, Non local means, SAR image despeckling, SAR imaging, Speckle suppression, Radar imaging, Bayesian analysis, image analysis, probability, radar imagery, speckle, synthetic aperture radar, trend analysis

Citation

Computers and Geosciences, 2017, 109, , pp. 16-24

Collections

Endorsement

Review

Supplemented By

Referenced By