TY - JOUR
T1 - Learning emergent behaviours for a hierarchical Bayesian framework for active robotic perception
AU - Ferreira, João Filipe
AU - Tsiourti, Christiana
AU - Dias, Jorge
PY - 2012
Y1 - 2012
N2 - In this research work, we contribute with a behaviour learning process for a hierarchical Bayesian framework for multimodal active perception, devised to be emergent, scalable and adaptive. This framework is composed by models built upon a common spatial configuration for encoding perception and action that is naturally fitting for the integration of readings from multiple sensors, using a Bayesian approach devised in previous work. The proposed learning process is shown to reproduce goal-dependent human-like active perception behaviours by learning model parameters (referred to as "attentional sets") for different free-viewing and active search tasks. Learning was performed by presenting several 3D audiovisual virtual scenarios using a head-mounted display, while logging the spatial distribution of fixations of the subject (in 2D, on left and right images, and in 3D space), data which are consequently used as the training set for the framework. As a consequence, the hierarchical Bayesian framework adequately implements high-level behaviour resulting from low-level interaction of simpler building blocks by using the attentional sets learned for each task, and is able to change these attentional sets "on the fly," allowing the implementation of goal-dependent behaviours (i.e., top-down influences).
AB - In this research work, we contribute with a behaviour learning process for a hierarchical Bayesian framework for multimodal active perception, devised to be emergent, scalable and adaptive. This framework is composed by models built upon a common spatial configuration for encoding perception and action that is naturally fitting for the integration of readings from multiple sensors, using a Bayesian approach devised in previous work. The proposed learning process is shown to reproduce goal-dependent human-like active perception behaviours by learning model parameters (referred to as "attentional sets") for different free-viewing and active search tasks. Learning was performed by presenting several 3D audiovisual virtual scenarios using a head-mounted display, while logging the spatial distribution of fixations of the subject (in 2D, on left and right images, and in 3D space), data which are consequently used as the training set for the framework. As a consequence, the hierarchical Bayesian framework adequately implements high-level behaviour resulting from low-level interaction of simpler building blocks by using the attentional sets learned for each task, and is able to change these attentional sets "on the fly," allowing the implementation of goal-dependent behaviours (i.e., top-down influences).
KW - Adaptive behaviour
KW - Bioinspired robotics
KW - Emergence
KW - Hierarchical Bayes models
KW - Human-robot interaction
KW - Multisensory active perception
KW - Scalability
UR - https://www.scopus.com/pages/publications/84872814883
U2 - 10.1007/s10339-012-0481-9
DO - 10.1007/s10339-012-0481-9
M3 - Article
C2 - 22806665
AN - SCOPUS:84872814883
SN - 1612-4782
VL - 13
SP - S155-S159
JO - Cognitive Processing
JF - Cognitive Processing
IS - 1 SUPPL
ER -