Utilizing variable auto encoder-based TDO optimization algorithm for predicting loneliness from electrocardiogram signals

Bharathi Vidhya, R. and Jerritta, S. (2023) Utilizing variable auto encoder-based TDO optimization algorithm for predicting loneliness from electrocardiogram signals. Soft Computing. ISSN 1432-7643

[thumbnail of Utilizing variable auto encoder-based TDO optimization algorithm for predicting loneliness from electrocardiogram signals _ Soft Computing.pdf] Archive
Utilizing variable auto encoder-based TDO optimization algorithm for predicting loneliness from electrocardiogram signals _ Soft Computing.pdf

Download (2MB)

Abstract

Several seniors and a substantial part of the general population are living in social isolation. This frequently occurs in
vulnerability, isolation, and depression, which then have a poor impact on other health-related factors. A number of health
problems, including a higher risk of cardio problems, are brought on by social isolation and loneliness. Electrocardiogram
(ECG) usage for mental condition recognition enables accurate determination of a person’s internal representation. The
electrocardiogram (ECG) signals can be thoroughly analyzed to uncover hidden data that may be helpful for the precise
identification of cardiac problems. ECG time-series information typically have great dimensions and complicated componentry. Using relevant information to guide training is among the main achievements of this type of learning. An ECG
signal plays a significant part in the individual body’s ability to manage behavior. Furthermore, loneliness identification is
crucial since it has the worse effect on the circumstances that afflict persons. This study suggested an approach for
detecting loneliness from an ECG signal to use a variable auto encoder-based optimization algorithm for ESN technique.
The suggested approach consists of three phases for identifying a person’s loneliness. Firstly, undecimated discrete wavelet transform is used to preprocess the acquired ECG data. Next, further characteristics are extracted from the precompiled signals using a variable auto encoder. For the precise categorization of loneliness in the ECG signal, a metaheuristic optimized ESN is, therefore, presented. The outcomes of the tests demonstrate that the suggested system with suitable ECG
representations produces improved accuracy as well as performance.

Item Type: Article
Subjects: Electronics and Communication Engineering > Data Communication
Divisions: Electronics and Communication Engineering
Depositing User: Mr IR Admin
Date Deposited: 24 Sep 2024 08:45
Last Modified: 24 Sep 2024 08:45
URI: https://ir.vistas.ac.in/id/eprint/7038

Actions (login required)

View Item
View Item