about
Perceptual fields reveal previously hidden dynamics of human visual motion sensitivityBifurcation study of a neural field competition model with an application to perceptual switching in motion integration.Dynamic resolution of ambiguity during tri-stable motion perception.Looking for symmetry: fixational eye movements are biased by image mirror symmetryRecurrent network dynamics reconciles visual motion segmentation and integration.Towards an understanding of the roles of visual areas MT and MST in computing speed.A Normalization Mechanism for Estimating Visual Motion across Speeds and Scales.Speed encoding in correlation motion detectors as a consequence of spatial structure.A visual field dependent architecture for second order motion processing.Contour inflections are adaptable features.Perceptual separation of transparent motion components: the interaction of motion, luminance and shape cues.The relative contribution of noise and adaptation to competition during tri-stable motion perception.Collaborations: Aim for balance in Ukraine reports.Bayesian Modeling of Motion Perception Using Dynamical Stochastic TexturesScene Regularity Interacts With Individual Biases to Modulate Perceptual Stability.Perceiving motion transparency in the absence of component direction differencesVisual motion gradient sensitivity shows scale invariant spatial frequency and speed tuning propertiesEvidence for multiple extra-striate mechanisms behind perception of visual motion gradientsDeveloping world: Eritrea should choose its own science pathNumerosity and density judgments: biases for area but not for volume
P50
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P50
description
investigador
@es
researcher
@en
name
Andrew Isaac Meso
@en
type
label
Andrew Isaac Meso
@en
prefLabel
Andrew Isaac Meso
@en
P108
P108
P31
P496
0000-0002-1919-7726