about
Learning, memory, and synesthesia.GLMdenoise: a fast, automated technique for denoising task-based fMRI data.Computational neuroimaging and population receptive fieldsVisual field map clusters in human frontoparietal cortex.Human trichromacy revisitedA Major Human White Matter Pathway Between Dorsal and Ventral Visual Cortex.A two-stage cascade model of BOLD responses in human visual cortexCultural differences in perceptual reorganization in US and Pirahã adults.Prevalence of learned grapheme-color pairings in a large online sample of synesthetes.Asynchronous broadband signals are the principal source of the BOLD response in human visual cortexCompressive spatial summation in human visual cortex.Temporal constraints on experimental emmetropization in infant monkeysSynesthetic colors determined by having colored refrigerator magnets in childhood.Problem of signal contamination in interhemispheric dual-sided subdural electrodes.Connective field modeling.Gamma oscillations in visual cortex: the stimulus mattersIdentification of the ventral occipital visual field maps in the human brain.Compressive Temporal Summation in Human Visual Cortex.Ocular compensation for alternating myopic and hyperopic defocus.Layered image representations and the computation of surface lightness.A motion aftereffect from visual imagery of motion.A motion aftereffect from still photographs depicting motion.Further evidence that chick eyes use the sign of blur in spectacle lens compensation.Bayesian analysis of retinotopic mapsiEEG-BIDS, extending the Brain Imaging Data Structure specification to human intracranial electrophysiology.Potency of myopic defocus in spectacle lens compensationTemporal constraints on lens compensation in chicksImage segmentation and lightness perceptionAn image-computable model for the stimulus selectivity of gamma oscillationsPredicting neuronal dynamics with a delayed gain control modelHuman posterior parietal cortex responds to visual stimuli as early as peristriate occipital cortexModeling visual performance differences 'around' the visual field: A computational observer approach
P50
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P50
description
hulumtues
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wetenschapper
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հետազոտող
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name
Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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type
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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Jonathan Winawer
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P106
P1153
6602803827
P21
P31
P496
0000-0001-7475-5586