Efficient Noise Filtration of Images by Low-Rank Singular Vector Approximations of Geodesics' Gramian Matrix

09/27/2022
by   Kelum Gajamannage, et al.
0

Modern society is interested in capturing high-resolution and fine-quality images due to the surge of sophisticated cameras. However, the noise contamination in the images not only inferior people's expectations but also conversely affects the subsequent processes if such images are utilized in computer vision tasks such as remote sensing, object tracking, etc. Even though noise filtration plays an essential role, real-time processing of a high-resolution image is limited by the hardware limitations of the image-capturing instruments. Geodesic Gramian Denoising (GGD) is a manifold-based noise filtering method that we introduced in our past research which utilizes a few prominent singular vectors of the geodesics' Gramian matrix for the noise filtering process. The applicability of GDD is limited as it encounters 𝒪(n^6) when denoising a given image of size n× n since GGD computes the prominent singular vectors of a n^2 × n^2 data matrix that is implemented by singular value decomposition (SVD). In this research, we increase the efficiency of our GGD framework by replacing its SVD step with four diverse singular vector approximation techniques. Here, we compare both the computational time and the noise filtering performance between the four techniques integrated into GGD.

READ FULL TEXT

page 15

page 16

research
03/04/2022

Geodesic Gramian Denoising Applied to the Images Contaminated With Noise Sampled From Diverse Probability Distributions

As quotidian use of sophisticated cameras surges, people in modern socie...
research
10/07/2013

Singular Value Decomposition of Images from Scanned Photographic Plates

We want to approximate the mxn image A from scanned astronomical photogr...
research
09/27/2018

Singular vector and singular subspace distribution for the matrix denoising model

In this paper, we study the matrix denosing model Y=S+X, where S is a lo...
research
09/28/2015

Compressive spectral embedding: sidestepping the SVD

Spectral embedding based on the Singular Value Decomposition (SVD) is a ...
research
08/01/2023

Decomposition Ascribed Synergistic Learning for Unified Image Restoration

Learning to restore multiple image degradations within a single model is...
research
03/15/2022

Time-series image denoising of pressure-sensitive paint data by projected multivariate singular spectrum analysis

Time-series data, such as unsteady pressure-sensitive paint (PSP) measur...
research
03/28/2023

SVD-DIP: Overcoming the Overfitting Problem in DIP-based CT Reconstruction

The deep image prior (DIP) is a well-established unsupervised deep learn...

Please sign up or login with your details

Forgot password? Click here to reset