Abstract

The noise2noise-based despeckling method, capable of training the despeckling deep neural network with only noisy synthetic aperture radar (SAR) image, has presented very good performance in recent research. This method requires a fine-registered multi-temporal dataset with minor time variance and uses similarity estimation to compensate for the time variance. However, constructing such a training dataset is very time-consuming and may not be viable for a certain practitioner. In this article, we propose a novel single-image-capable speckling method that combines the similarity-based block-matching and noise referenced deep learning network. The denoising network designed for this method is an encoder–decoder convolutional neural network and is accommodated to small image patches. This method firstly constructs a large number of noisy pairs as training input by similarity-based block-matching in either one noisy SAR image or multiple images. Then, the method trains the network in a Siamese manner with two parameter-sharing branches. The proposed method demonstrates favorable despeckling performance with both simulated and real SAR data with respect to other state-of-the-art reference filters. It also presents satisfying generalization capability as the trained network can despeckle well the unseen image of the same sensor. The main advantage of the proposed method is its application flexibility. It could be trained with either one noisy image or multiple images. Furthermore, the despeckling could be inferred by either the ad hoc trained network or a pre-trained one of the same sensor.

Highlights

  • Introduction published maps and institutional affilAs a coherent system, synthetic rapture radar (SAR) is naturally affected by speckles, which is a random structure caused by the interference of waves scattered from detection objects

  • The latest developments of supervised deep learning denoising methods, such as denoising convolutional neural network (DnCNN) [1] and fast and flexible denoising convolutional neural network (FFDNet) [2], have improved the denoising results of ordinary images compared with the traditional methods

  • The training cannot deal well with images that have major changes and may still require temporal variation compensation based on pixel-level similarity evaluation

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Summary

Introduction

Synthetic rapture radar (SAR) is naturally affected by speckles, which is a random structure caused by the interference of waves scattered from detection objects. Speckle is a real SAR measurement that brings information about the detection object. The latest developments of supervised deep learning denoising methods, such as denoising convolutional neural network (DnCNN) [1] and fast and flexible denoising convolutional neural network (FFDNet) [2], have improved the denoising results of ordinary images compared with the traditional methods. Many researchers have tried to apply supervised deep learning methods to SAR despeckling. Such a method requires corresponding clean images as references to help iations

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