Title :
A context and task dependent visual attention system to control a mobile robot
Author :
Baccon, Jean-Christophe ; Hafemeister, Laurence ; Gaussier, Philippe
Author_Institution :
ENSEA, France
Abstract :
In this paper an artificial neural network model is proposed for the selection of spatially relevant visual information present in an unknown environment. An attentional mechanism is used to control the orientation of a mobile robot. In particular the system is built to be independent of the nature of the target but dependent on the surrounding context and on the task in which the agent is involved. The computational model take into account neurobiological and psychophysical data related to pop-out and attentional search studies. It consists in a bottom-up process leading to an unique salient map. To constrain the selection of expected object, an additional top-down bias is introduced to favor the meaningful features according to the task. We will show how such a neuronal architecture is able to rapidly direct the gaze of a mobile robot towards particular objects according to the attentional bias. This behavioral approach favoring the dynamical interplay between environment and task, brings new insights to the nature of mechanisms such as object recognition.
Keywords :
attitude control; image recognition; mobile robots; neural net architecture; neurocontrollers; object recognition; robot vision; artificial neural network model; attentional bias; attentional search studies; bottom-up process; computational model; context dependent visual attention system; dynamical interplay; mobile robot control; neurobiological data; neuronal architecture; object recognition; pop-out search studies; psychophysical data; spatially relevant visual information; task dependent visual attention system; top-down bias; unique salient map; unknown environment; Artificial neural networks; Biological system modeling; Computational modeling; Context modeling; Control system synthesis; Control systems; Gaussian processes; Mobile robots; Psychology; Robot control;
Conference_Titel :
Intelligent Robots and Systems, 2002. IEEE/RSJ International Conference on
Print_ISBN :
0-7803-7398-7
DOI :
10.1109/IRDS.2002.1041395