Despite their immense success in numerous fields, machine and deep learning systems have not yet been able to firmly establish themselves in mission-critical applications in healthcare. One of the main reasons lies in the fact that when models are presented with previously unseen, Out-of-Distribution samples, their performance deteriorates significantly. This is known as the Domain Generalization (DG) problem. Our objective in this work is to propose a benchmark for evaluating DG algorithms, in addition to introducing a novel architecture for tackling DG in biosignal classification. In this paper, we describe the Domain Generalization problem for biosignals, focusing on electrocardiograms (ECG) and electroencephalograms (EEG) and propose an...
An electrocardiograph (ECG) is employed as a primary tool for diagnosing cardiovascular diseases (CV...
Deep learning models for electrocardiogram (ECG) classification can be affected by the presence of p...
This paper illustrates the use of a combined neural network model based on Stacked Generalization me...
Introduction: The goal of the 2021 PhysioNet/CinC challenge is to classify cardiac abnormalities fro...
Introduction: The goal of the 2021 PhysioNet/CinC challenge is diagnosing cardiac abnormalities from...
Objective: When training machine learning models, we often assume that the training data and evaluat...
Obtaining per-beat information is a key task in the analysis of cardiac electrocardiograms (ECG), as...
The research activity contained in the present thesis work is devoted to the development of novel Ma...
Large high-quality datasets are essential for building powerful artificial intelligence (AI) algorit...
In the Machine Learning (ML) literature, a well-known problem is the Dataset Shift problem where, di...
Electrocardiograph (ECG) is employed as a primary tool for diagnosing cardiovascular diseases (CVD) ...
Due to many new medical uses, the value of ECG classification is very demanding. There are some Mach...
International audienceThis chapter presents an evolutionary Artificial Neural Networks (ANN) classif...
Nowadays, Deep Learning tools have been widely applied in biometrics. Electrocardiogram (ECG) biomet...
Generative Adversarial Networks (GANs) are a revolutionary innovation in machine learning that enabl...
An electrocardiograph (ECG) is employed as a primary tool for diagnosing cardiovascular diseases (CV...
Deep learning models for electrocardiogram (ECG) classification can be affected by the presence of p...
This paper illustrates the use of a combined neural network model based on Stacked Generalization me...
Introduction: The goal of the 2021 PhysioNet/CinC challenge is to classify cardiac abnormalities fro...
Introduction: The goal of the 2021 PhysioNet/CinC challenge is diagnosing cardiac abnormalities from...
Objective: When training machine learning models, we often assume that the training data and evaluat...
Obtaining per-beat information is a key task in the analysis of cardiac electrocardiograms (ECG), as...
The research activity contained in the present thesis work is devoted to the development of novel Ma...
Large high-quality datasets are essential for building powerful artificial intelligence (AI) algorit...
In the Machine Learning (ML) literature, a well-known problem is the Dataset Shift problem where, di...
Electrocardiograph (ECG) is employed as a primary tool for diagnosing cardiovascular diseases (CVD) ...
Due to many new medical uses, the value of ECG classification is very demanding. There are some Mach...
International audienceThis chapter presents an evolutionary Artificial Neural Networks (ANN) classif...
Nowadays, Deep Learning tools have been widely applied in biometrics. Electrocardiogram (ECG) biomet...
Generative Adversarial Networks (GANs) are a revolutionary innovation in machine learning that enabl...
An electrocardiograph (ECG) is employed as a primary tool for diagnosing cardiovascular diseases (CV...
Deep learning models for electrocardiogram (ECG) classification can be affected by the presence of p...
This paper illustrates the use of a combined neural network model based on Stacked Generalization me...