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An Ensemble with Shared Representations Based on Convolutional Networks for Continually Learning Facial Expressions

Authors :
Siqueira, Henrique
Barros, Pablo
Magg, Sven
Wermter, Stefan
Publication Year :
2021

Abstract

Social robots able to continually learn facial expressions could progressively improve their emotion recognition capability towards people interacting with them. Semi-supervised learning through ensemble predictions is an efficient strategy to leverage the high exposure of unlabelled facial expressions during human-robot interactions. Traditional ensemble-based systems, however, are composed of several independent classifiers leading to a high degree of redundancy, and unnecessary allocation of computational resources. In this paper, we proposed an ensemble based on convolutional networks where the early layers are strong low-level feature extractors, and their representations shared with an ensemble of convolutional branches. This results in a significant drop in redundancy of low-level features processing. Training in a semi-supervised setting, we show that our approach is able to continually learn facial expressions through ensemble predictions using unlabelled samples from different data distributions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.03934
Document Type :
Working Paper