Characterization of Covid-19 Dataset using Complex Networks and Image Processing

09/24/2020
by   Josimar Chire, et al.
0

This paper aims to explore the structure of pattern behind covid-19 dataset. The dataset includes medical images with positive and negative cases. A sample of 100 sample is chosen, 50 per each class. An histogram frequency is calculated to get features using statistical measurements, besides a feature extraction using Grey Level Co-Occurrence Matrix (GLCM). Using both features are build Complex Networks respectively to analyze the adjacency matrices and check the presence of patterns. Initial experiments introduces the evidence of hidden patterns in the dataset for each class, which are visible using Complex Networks representation.

READ FULL TEXT

page 1

page 2

research
01/11/2022

Feature Extraction Framework based on Contrastive Learning with Adaptive Positive and Negative Samples

In this study, we propose a feature extraction framework based on contra...
research
01/10/2022

Identification of chicken egg fertility using SVM classifier based on first-order statistical feature extraction

This study aims to identify chicken eggs fertility using the support vec...
research
12/05/2021

Classification of COVID-19 on chest X-Ray images using Deep Learning model with Histogram Equalization and Lungs Segmentation

Background and Objective: Artificial intelligence (AI) methods coupled w...
research
10/21/2020

Detection of COVID-19 through the analysis of vocal fold oscillations

Phonation, or the vibration of the vocal folds, is the primary source of...
research
01/20/2023

Exploring ordered patterns in the adjacency matrix for improving machine learning on complex networks

The use of complex networks as a modern approach to understanding the wo...
research
10/23/2021

Improve High Level Classification with a More Sensitive metric and Optimization approach for Complex Network Building

Complex Networks are a good approach to find internal relationships and ...

Please sign up or login with your details

Forgot password? Click here to reset