Title :
Modeling the Influences of Cyclic Top-Down and Bottom-Up Processes for Reinforcement Learning in Eye Movements
Author :
Lim, Ji Hyoun ; Liu, Yili
Author_Institution :
Mobile Commun. Div., Samsung Electron., Seoul
fDate :
7/1/2009 12:00:00 AM
Abstract :
Understanding and reproducing complex human oculomotor behaviors using computational models is a challenging task. In this paper, two studies are presented, which focus on the development and evaluation of a computational model to show the influences of cyclic top-down and bottom-up processes on eye movements. To explain these processes, reinforcement learning was used to control eye movements. The first study showed that, in a picture-viewing task, different policies obtained from different picture-viewing conditions produced different types of eye movement patterns. In another visual search task, the second study illustrated that feedback information from each saccadic eye movement could be used to update the model´s eye movement policy, generating different patterns in the following saccade. These two studies demonstrate the value of an integrated reinforcement learning model in explaining both top-down and bottom-up processes of eye movements within one computational model.
Keywords :
cognitive systems; eye; learning (artificial intelligence); medical computing; visual perception; bottom-up process; complex human oculomotor behaviors; computational model; cyclic top-down process; eye movements; integrated reinforcement learning model; picture-viewing task; Cognitive science; Computational modeling; Displays; Eyes; Feedback; Humans; Learning; Machine vision; Mobile communication; Pattern recognition; Cognitive model; eye movement; queueing network model; reinforcement learning;
Journal_Title :
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
DOI :
10.1109/TSMCA.2009.2018635