Paper
14 April 2000 Bases of a pre-attentional mechanism by means of presynaptic inhibition in the lateral geniculate nucleus
Roberto Moreno-Diaz Jr., Alexis Quesada Arengbia, Miguel Aleman-Flores
Author Affiliations +
Abstract
Presynaptic Inhibition (PI) basically consists of the strong suppression of a neuron's response before the stimulus reaches the synaptic terminals mediated by a second, inhibitory, neuron. It has a long lasting effect, greatly potentiated by the action of anesthetics, that has been observed in motorneurons and in several other places of nervous systems, mainly in sensory processing. In this paper we will focus on several different ways of modeling the effect of Presynaptic Inhibition (PI) in the visual pathway as well as the different artificial counterparts derived from such modelling, mainly in two directions: the possibility of computing invariant representations against general changes in illumination of the input image impinging the retina (which is equivalent to a low-level non linear information processing filter) and the role of PI as selector of sets of stimulae that have to be derived to higher brain areas, which, in turn, is equivalent to a 'higher-level filter' of information, in the sense of 'filtering' the possible semantic content of the information that is allowed to reach later stages of processing.
© (2000) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Roberto Moreno-Diaz Jr., Alexis Quesada Arengbia, and Miguel Aleman-Flores "Bases of a pre-attentional mechanism by means of presynaptic inhibition in the lateral geniculate nucleus", Proc. SPIE 3981, Medical Imaging 2000: Image Perception and Performance, (14 April 2000); https://doi.org/10.1117/12.383122
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KEYWORDS
Visualization

Image processing

Retina

Visual process modeling

Image filtering

Linear filtering

Modeling

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