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Enrique Tomás Martínez Beltrán

Federated learning, trustworthy AI and cyberdefense research, focused on systems that are robust, privacy-preserving and useful in security operations.

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  1. Home
  2. Publications on Federated Learning, AI and Cybersecurity
  3. Analyzing the impact of Driving tasks when detecting emotions through brain--computer interfaces
Journal article2023

Neural Computing and Applications

Analyzing the impact of Driving tasks when detecting emotions through brain--computer interfaces

Traffic accidents are the leading cause of death among young people, a problem that today costs an enormous number of victims. Several technologies have been proposed to prevent accidents, being brain--computer interface...

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Abstract

Traffic accidents are the leading cause of death among young people, a problem that today costs an enormous number of victims. Several technologies have been proposed to prevent accidents, being brain--computer interfaces (BCIs) one of the most promising. In this context, BCIs have been used to detect emotional states, concentration issues, or stressful situations, which could play a fundamental role in the road since they are directly related to the drivers' decisions. However, there is no extensive literature applying BCIs to detect subjects' emotions in driving scenarios. In such a context, there are some challenges to be solved, such as (i) the impact of performing a driving task on the emotion detection and (ii) which emotions are more detectable in driving scenarios. To improve these challenges, this work proposes a framework focused on detecting emotions using electroencephalography with machine learning and deep learning algorithms. In addition, a use case has been designed where two scenarios are presented. The first scenario consists in listening to sounds as the primary task to perform, while in the second scenario listening to sound becomes a secondary task, being the primary task using a driving simulator. In this way, it is intended to demonstrate whether BCIs are useful in this driving scenario. The results improve those existing in the literature, achieving 99% accuracy for the detection of two emotions (non-stimuli and angry), 93% for three emotions (non-stimuli, angry and neutral) and 75% for four emotions (non-stimuli, angry, neutral and joy).

Authors

Mario Quiles PérezEnrique Tomás Martínez BeltránSergio López BernalGregorio Martínez PérezAlberto Huertas Celdrán

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Journal article2023

International Journal of Medical Informatics

Opportunities for standardization in emergency scenarios in the European Union

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Objective Despite current standardization actions towards the unification between European Union (EU) countries, there is still much work to do. In this context, this paper aims to offer a comprehensive analysis of the l...

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Journal article2024

Applied Intelligence

Analyzing the robustness of decentralized horizontal and vertical federated learning architectures in a non-IID scenario

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Federated learning (FL) enables participants to collaboratively train machine and deep learning models while safeguarding data privacy. However, the FL paradigm still has drawbacks that affect its trustworthiness, as mal...

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