Title :
A neurocomputational model of figure-ground discrimination and target tracking
Author :
Sun, Haijian ; Liu, Lin ; Guo, Aike
fDate :
7/1/1999 12:00:00 AM
Abstract :
A neurocomputational model is presented for figure-ground discrimination and target tracking. In the model, the elementary motion detectors of the correlation type, the computational modules of saccadic and smooth pursuit eye movement, an oscillatory neural-network motion perception module and a selective attention module are involved. It is shown that through the oscillatory amplitude and frequency encoding, and selective synchronization of phase oscillators, the figure and the ground can be successfully discriminated from each other. The receptive fields developed by hidden units of the networks were surprisingly similar to the actual receptive fields and columnar organization found in the primate visual cortex. It is suggested that equivalent mechanisms may exist in the primate visual cortex to discriminate figure-ground in both temporal and spatial domains
Keywords :
image processing; neural nets; neurophysiology; oscillations; physiological models; synchronisation; target tracking; visual perception; columnar organization; correlation; elementary motion detectors; figure-ground discrimination; frequency encoding; neurocomputational model; oscillatory amplitude; oscillatory neural-network motion perception module; phase oscillators; primate visual cortex; receptive fields; saccadic eye movement; selective synchronization; smooth pursuit eye movement; spatial domain; target tracking; temporal domain; Biophysics; Chaos; Detectors; Information processing; Laboratories; Motion detection; Multi-layer neural network; Oscillators; Sun; Target tracking;
Journal_Title :
Neural Networks, IEEE Transactions on