A Nonlinear Hebbian Network that Learns to Detect Disparity in Random-Dot Stereograms
- 1 April 1996
- journal article
- Published by MIT Press in Neural Computation
- Vol. 8 (3) , 545-566
- https://doi.org/10.1162/neco.1996.8.3.545
Abstract
An intrinsic limitation of linear, Hebbian networks is that they are capable of learning only from the linear pairwise correlations within an input stream. To explore what higher forms of structure could be learned with a nonlinear Hebbian network, we constructed a model network containing a simple form of nonlinearity and we applied it to the problem of learning to detect the disparities present in random-dot stereograms. The network consists of three layers, with nonlinear sigmoidal activation functions in the second-layer units. The nonlinearities allow the second layer to transform the pixel-based representation in the input layer into a new representation based on coupled pairs of left-right inputs. The third layer of the network then clusters patterns occurring on the second-layer outputs according to their disparity via a standard competitive learning rule. Analysis of the network dynamics shows that the second-layer units' nonlinearities interact with the Hebbian learning rule to expand the region over which pairs of left-right inputs are stable. The learning rule is neurobiologically inspired and plausible, and the model may shed light on how the nervous system learns to use coincidence detection in general.Keywords
This publication has 19 references indexed in Scilit:
- Models of Orientation and Ocular Dominance Columns in the Visual Cortex: A Critical ComparisonNeural Computation, 1995
- What Is the Goal of Sensory Coding?Neural Computation, 1994
- Summation and Division by Neurons in Primate Visual CortexScience, 1994
- The Role of Weight Normalization in Competitive LearningNeural Computation, 1994
- A synaptic model of memory: long-term potentiation in the hippocampusNature, 1993
- Self-organizing neural network that discovers surfaces in random-dot stereogramsNature, 1992
- Phase-based disparity measurementCVGIP: Image Understanding, 1991
- A circuit for detection of interaural time differences in the brain stem of the barn owlJournal of Neuroscience, 1990
- Insights into associative long-term potentiation from computational models of NMDA receptor-mediated calcium influx and intracellular calcium concentration changesJournal of Neurophysiology, 1990
- Theory for the development of neuron selectivity: orientation specificity and binocular interaction in visual cortexJournal of Neuroscience, 1982