Title :
Learning Abstract Behaviors with the Hierarchical Incremental Gaussian Mixture Network
Author :
de Pontes Pereira, R. ; Engel, Paulo Martins ; Pinto, Rafael C.
Author_Institution :
Inf. Inst., Univ. Fed. do Rio Grande do Sul, Porto Alegre, Brazil
Abstract :
This paper presents a new probabilistic hierarchical model, called HIGMN (Hierarchical Incremental Gaussian Mixture Network), which is based on ideas presented by Deep Architectures. The proposed model, composed by layers of IGMNs, is able to extract features from data input of different domains in the low-level layers and to correlate these features in a high-level layer. Experiments show that HIGMN is able to learn an abstract behavior using the features extracted from sensory and motor data of a mobile robot and to perform correct actions even in unknown instances of sensory perception.
Keywords :
Gaussian processes; correlation methods; feature extraction; learning (artificial intelligence); mobile robots; probability; HIGMN layer; abstract behavior learning; deep architectures; feature correlation; feature extraction; hierarchical incremental Gaussian mixture network; high-level layer; low-level layers; mobile robot; motor data; probabilistic hierarchical model; sensory data; sensory perception; Abstracts; Feature extraction; Mathematical model; Mobile robots; Robot sensing systems; Trajectory; Vectors; Deep Learning; HIGMN; Hierarchical Incremental Gaussian Mixture Network; IGMN; Probabilistic Models; Robotics;
Conference_Titel :
Neural Networks (SBRN), 2012 Brazilian Symposium on
Conference_Location :
Curitiba
Print_ISBN :
978-1-4673-2641-4
DOI :
10.1109/SBRN.2012.30