no code implementations • 26 Apr 2021 • Nuria Rodriguez-Diaz, Decky Aspandi, Federico Sukno, Xavier Binefa
Lie detection is considered a concern for everyone in their day to day life given its impact on human interactions.
1 code implementation • 18 Feb 2021 • Decky Aspandi, Federico Sukno, Björn Schuller, Xavier Binefa
This paper addresses these shortcomings by proposing a novel model that efficiently extracts both spatial and temporal features of the data by means of its enhanced temporal modelling based on latent features.
1 code implementation • 3 Feb 2020 • Decky Aspandi, Adria Mallol-Ragolta, Björn Schuller, Xavier Binefa
However, the use of latent features, which is feasible through adversarial learning, is not largely explored, yet.
no code implementations • 10 Dec 2019 • Joaquim Comas, Decky Aspandi, Xavier Binefa
In this work, we propose a multi-modal emotion recognition model based on deep learning techniques using the combination of peripheral physiological signals and facial expressions.
no code implementations • ICLR Workshop LLD 2019 • Adrià Ruiz, Oriol Martinez, Xavier Binefa, Jakob Verbeek
Given a pool of unlabelled images, the goal is to learn a representation where a set of target factors are disentangled from others.
no code implementations • 24 Jan 2019 • Adria Ruiz, Oriol Martinez, Xavier Binefa, Jakob Verbeek
Given a pool of unlabeled images, the goal is to learn a representation where a set of target factors are disentangled from others.
no code implementations • 1 Mar 2018 • Adria Ruiz, Ognjen Rudovic, Xavier Binefa, Maja Pantic
In this framework, we treat instance-labels as temporally-dependent latent variables in an Undirected Graphical Model.
no code implementations • 6 Sep 2016 • Adria Ruiz, Ognjen Rudovic, Xavier Binefa, Maja Pantic
In this paper, we address the Multi-Instance-Learning (MIL) problem when bag labels are naturally represented as ordinal variables (Multi--Instance--Ordinal Regression).
no code implementations • ICCV 2015 • Adria Ruiz, Joost Van de Weijer, Xavier Binefa
Additionally, we show that SHTL achieves competitive performance compared with state-of-the-art Transductive Learning approaches which face the problem of limited training data by using unlabelled test samples during training.
no code implementations • CVPR 2014 • Luis Ferraz, Xavier Binefa, Francesc Moreno-Noguer
Given a set of 3D-to-2D matches, we formulate pose estimation problem as a low-rank homogeneous sys- tem where the solution lies on its 1D null space.