Sensor integration in KIV brain model for decision making

KIV, a biologically inspired neural network with non-convergent dynamics is considered. This contribution builds on the previous studies concerning components of KIV and considers sensor integration. The method is demonstrated using a simple character recognition task. The significance of the results in the framework of biologically plausible sensor integration is discussed.

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