A new approach for atmospheric turbulence removal using low-rank matrix factorization.

PeerJ Comput Sci

Department of Artificial Intelligence, Faculty of Computer Engineering, University of Isfahan, Isfahan, Iran.

Published: January 2024

In this article, a novel method for removing atmospheric turbulence from a sequence of turbulent images and restoring a high-quality image is presented. Turbulence is modeled using two factors: the geometric transformation of pixel locations represents the distortion, and the varying pixel brightness represents spatiotemporal varying blur. The main framework of the proposed method involves the utilization of low-rank matrix factorization, which achieves the modeling of both the geometric transformation of pixels and the spatiotemporal varying blur through an iterative process. In the proposed method, the initial step involves the selection of a subset of images using the random sample consensus method. Subsequently, estimation of the mixture of Gaussian noise parameters takes place. Following this, a window is chosen around each pixel based on the entropy of the surrounding region. Within this window, the transformation matrix is locally estimated. Lastly, by considering both the noise and the estimated geometric transformations of the selected images, an estimation of a low-rank matrix is conducted. This estimation process leads to the production of a turbulence-free image. The experimental results were obtained from both real and simulated datasets. These results demonstrated the efficacy of the proposed method in mitigating substantial geometrical distortions. Furthermore, the method showcased the ability to improve spatiotemporal varying blur and effectively restore the details present in the original image.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10909186PMC
http://dx.doi.org/10.7717/peerj-cs.1713DOI Listing

Publication Analysis

Top Keywords

low-rank matrix
12
spatiotemporal varying
12
varying blur
12
proposed method
12
atmospheric turbulence
8
matrix factorization
8
geometric transformation
8
method
6
approach atmospheric
4
turbulence removal
4

Similar Publications

Detecting and recovering a low-rank signal in a noisy data matrix is a fundamental task in data analysis. Typically, this task is addressed by inspecting and manipulating the spectrum of the observed data, e.g.

View Article and Find Full Text PDF

Empirical Bayes Linked Matrix Decomposition.

Mach Learn

October 2024

Division of Biostatistics and Health Data Science, School of Public Health, University of Minnesota, Minneapolis, 55455, MN, USA.

Data for several applications in diverse fields can be represented as multiple matrices that are linked across rows or columns. This is particularly common in molecular biomedical research, in which multiple molecular "omics" technologies may capture different feature sets (e.g.

View Article and Find Full Text PDF

Modern surveys with large sample sizes and growing mixed-type questionnaires require robust and scalable analysis methods. In this work, we consider recovering a mixed dataframe matrix, obtained by complex survey sampling, with entries following different canonical exponential distributions and subject to heterogeneous missingness. To tackle this challenging task, we propose a two-stage procedure: in the first stage, we model the entry-wise missing mechanism by logistic regression, and in the second stage, we complete the target parameter matrix by maximizing a weighted log-likelihood with a low-rank constraint.

View Article and Find Full Text PDF

Subspace learning using low-rank latent representation learning and perturbation theorem: Unsupervised gene selection.

Comput Biol Med

February 2025

Faculty of Engineering, Computing and the Environment, Kingston University, Penrhyn Road Campus, Kingston Upon Thames, London, KT1 2EE, UK.

In recent years, gene expression data analysis has gained growing significance in the fields of machine learning and computational biology. Typically, microarray gene datasets exhibit a scenario where the number of features exceeds the number of samples, resulting in an ill-posed and underdetermined equation system. The presence of redundant features in high-dimensional data leads to suboptimal performance and increased computational time for learning algorithms.

View Article and Find Full Text PDF

Accurate estimation of low frequency modes in power system are very much important for improving small signal stability. The parametric model parameters estimator known as Total least square estimation of signal parameters via rotational invariance techniques (TLS-ESPRIT) works effectively even in noisy conditions. However, this model parameter estimator requires prior information about numbers of modes of the signal.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!