Title :
A generative-discriminative learning model for noisy information fusion
Author :
Thomas Hecht;Alexander Gepperth
Author_Institution :
Computer science and system engineering department - ENSTA ParisTech, 828 boulevard des Maré
Abstract :
This article is concerned with the acquisition of mul-timodal integration capacities by learning algorithms. Humans seem to perform statistically optimal fusion, and this ability may be gradually learned from experience. In order to stress the advantage of learning approaches in contrast to hand-coded models, we propose a generative-discriminative learning architecture that avoids simplifying assumptions on prior distributions and copes with realistic relationships between observations and underlying values. We base our investigation on a simple self-organized approach, for which we show statistical near-optimality properties by explicit comparison to an equivalent Bayesian model on a realistic artificial dataset.
Keywords :
"Sensors","Bayes methods","Encoding","Linear regression","Noise measurement","Computer architecture","Data models"
Conference_Titel :
Development and Learning and Epigenetic Robotics (ICDL-EpiRob), 2015 Joint IEEE International Conference on
DOI :
10.1109/DEVLRN.2015.7346148