A Comparative Study of Removal Noise from Remote Sensing Image

02/05/2010
by   Salem Saleh Al-amri, et al.
0

This paper attempts to undertake the study of three types of noise such as Salt and Pepper (SPN), Random variation Impulse Noise (RVIN), Speckle (SPKN). Different noise densities have been removed between 10 types of filters as Mean Filter (MF), Adaptive Wiener Filter (AWF), Gaussian Filter (GF), Standard Median Filter (SMF) and Adaptive Median Filter (AMF). The same is applied to the Saturn remote sensing image and they are compared with one another. The comparative study is conducted with the help of Mean Square Errors (MSE) and Peak-Signal to Noise Ratio (PSNR). So as to choose the base method for removal of noise from remote sensing image.

READ FULL TEXT
research
04/26/2010

Deblured Gaussian Blurred Images

This paper attempts to undertake the study of Restored Gaussian Blurred ...
research
12/05/2009

Performance analysis of Non Linear Filtering Algorithms for underwater images

Image filtering algorithms are applied on images to remove the different...
research
04/11/2015

High Density Noise Removal by Cascading Algorithms

An advanced non-linear cascading filter algorithm for the removal of hig...
research
09/06/2018

Oblique Stripe Removal in Remote Sensing Images via Oriented Variation

Destriping is a classical problem in remote sensing image processing. Al...
research
02/08/2020

Ramifications and Diminution of Image Noise in Iris Recognition System

Human Identity verification has always been an eye-catching goal in digi...
research
04/19/2021

A SAR speckle filter based on Residual Convolutional Neural Networks

In recent years, Machine Learning (ML) algorithms have become widespread...
research
09/21/2016

Improving analytical tomographic reconstructions through consistency conditions

This work introduces and characterizes a fast parameterless filter based...

Please sign up or login with your details

Forgot password? Click here to reset