Biologically Plausible Neural Circuits for Realization of Maximum Operations
Author(s)
Yu, Angela J.; Giese, Martin A.; Poggio, Tomaso A.
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Object recognition in the visual cortex is based on a hierarchical architecture, in which specialized brain regions along the ventral pathway extract object features of increasing levels of complexity, accompanied by greater invariance in stimulus size, position, and orientation. Recent theoretical studies postulate a non-linear pooling function, such as the maximum (MAX) operation could be fundamental in achieving such invariance. In this paper, we are concerned with neurally plausible mechanisms that may be involved in realizing the MAX operation. Four canonical circuits are proposed, each based on neural mechanisms that have been previously discussed in the context of cortical processing. Through simulations and mathematical analysis, we examine the relative performance and robustness of these mechanisms. We derive experimentally verifiable predictions for each circuit and discuss their respective physiological considerations.
Date issued
2001-09-01Other identifiers
AIM-2001-022
CBCL-207
Series/Report no.
AIM-2001-022CBCL-207
Keywords
AI, maximum operation, invariance, recurrent inhibition, shunting inhibition