Abstract

The presence of noise in remote sensing satellite images may cause limitations in analysis and object recognition. Noise suppression based on thresholding neural network (TNN) and optimization algorithms perform well in de-noising. However, there are some problems that need to be addressed. Furthermore, finding the optimal threshold value is a challenging task for learning algorithms. Moreover, in an optimization-based noise removal technique, we must utilize the optimization algorithm to overcome the problem. These methods are effective at reducing noise but may blur some parts of an image, and they are time-consuming. This flaw motivated the authors to develop an efficient de-noising method to discard un-wanted noises from these images. This study presents a new enhanced adaptive generalized Gaussian distribution (AGGD) threshold for satellite and hyperspectral image (HSI) de-noising. This function is data-driven, non-linear, and it can be fitted to any image. Applying this function provides us with an optimum threshold value without using any least mean square (LMS) learning or optimization algorithms. Thus, it is possible to save the processing time as well. The proposed function contains two main parts. There is an AGGD threshold in the interval [−σn, σn], and a new non-linear function behind the interval. These combined functions can tune the wavelet coefficients properly. We applied the proposed technique to various satellite remote sensing images. We also used hyperspectral remote sensing images from AVIRIS, HYDICE, and ROSIS sensors for our experimental analysis and validation process. We applied peak signal-to-noise ratio (PSNR) and Mean Structural Similarity Index (MSSIM) to measure and evaluate the performance analysis of different de-noising techniques. Finally, this study shows the superiority of the developed method as compared with the previous TNN and optimization-based noise suppression methods. Moreover, as the results indicate, the proposed method improves PSNR values and visual inspection significantly when compared with various image de-noising methods.

Highlights

  • IntroductionSatellite and hyperspectral image (HSI) de-noising has become very popular among researchers in remote sensing

  • The results indicate that the proposed enhanced adaptive generalized Gaussian distribution (AGGD) performed better than other techniques

  • Image 4 has been used as the test image contaminated by additive white Gaussian noise (AWGN) with zero mean and standard deviation of 30 to obtain the noisy image

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Summary

Introduction

Satellite and hyperspectral image (HSI) de-noising has become very popular among researchers in remote sensing. Noise removal is one of the critical and challenging tasks in image and signal processing. Various types of unwanted noises sometimes influence the quality and resolution of an image. These noises may damage the quality of an image during the acquisition and transmission procedures, causing deflection from the original image. These artifacts can affect the characteristics and attributes of the image. Noise removal plays an important role as a preprocessing step in various

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