Development of New Machine Learning Models Based on Gaussian Processes. Applications to Remote Sensing and Astrophysics

  1. Morales Álvarez, Pablo
Supervised by:
  1. Rafael Molina Soriano Director
  2. Aggelos K. Katsaggelos Director

Defence university: Universidad de Granada

Fecha de defensa: 05 October 2020

Committee:
  1. Javier Mateos Delgado Chair
  2. Mari Luz García Martínez Secretary
  3. Sandra Morales Martínez Committee member
  4. Juan Gabriel Serra Pérez Committee member
  5. Valeriana Naranjo Ornedo Committee member
Department:
  1. CIENCIAS DE LA COMPUTACIÓN E INTELIGENCIA ARTIFICIAL

Type: Thesis

Abstract

In this PhD thesis we have developed different machine learning models based on Gaussian Processes. Different settings (regression, classification and crowdsourcing) are considered, and various application fields (specially remote sensing and astrophysics, but also threat detection and sentiment analysis) are targeted. The main global conclusion of this PhD thesis is the versatility of Gaussian Processes to model different scenarios (regression, classification, crowdsourcing) and target various applications (remote sensing, security, astrophysics), either as the central algorithm to perform the task at hand (Chapters 2-7) or as an auxiliary tool to be integrated within a larger model (Chapter 8)