Characterisation and adaptive learning in interactive video retrieval

  1. Fernández Beltrán, Rubén
Supervised by:
  1. Filiberto Pla Bañón Director

Defence university: Universitat Jaume I

Fecha de defensa: 20 May 2016

Committee:
  1. Francesc Josep Ferri Rabasa Chair
  2. J. S. Sanchez Secretary
  3. Joan Isaac Biel Tres Committee member

Type: Thesis

Teseo: 417551 DIALNET lock_openTDX editor

Abstract

In this work, we are interested in the use of latent topics to overcome the current limitations in CBVR. Despite the potential of topic models to uncover the hidden structure of a collection, they have traditionally been unable to provide a competitive advantage in CBVR because of the high computational cost of their algorithms and the complexity of the latent space in the visual domain. Throughout this thesis we focus on designing new models and tools based on topic models to take advantage of the latent space in CBVR. Specifically, we have worked in four different areas within the retrieval process: vocabulary reduction, encoding, modelling and ranking, being our most important contributions related to both modelling and ranking.