Title
A Sub-Layered Hierarchical Pyramidal Neural Architecture for Facial Expression Recognition.
Abstract
In domains where computational resources and labeled data are limited, such as in robotics, deep networks with millions of weights might not be the optimal solution. In this paper, we introduce a connectivity scheme for pyramidal architectures to increase their capacity for learning features. Experiments on facial expression recognition of unseen people demonstrate that our approach is a potential candidate for applications with restricted resources, due to good generalization performance and low computational cost. We show that our approach generalizes as well as convolutional architectures in this task but uses fewer trainable parameters and is more robust for low-resolution faces.
Year
Venue
Field
2018
ESANN
Architecture,Pattern recognition,Facial expression recognition,Computer science,Artificial intelligence
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Henrique Siqueira123.40
Pablo V. A. Barros211922.02
Sven Magg36713.49
Cornelius Weber431841.92
Stefan Wermter51100151.62