sameAs
Natural image statistics and neural representationA Convolutional Subunit Model for Neuronal Responses in Macaque V1Efficient coding of spatial information in the primate retina.Hierarchical spike coding of soundSummary statistics in auditory perception.Sound texture perception via statistics of the auditory periphery: evidence from sound synthesis.Recovery of sparse translation-invariant signals with continuous basis pursuitNonlinear extraction of independent components of natural images using radial gaussianization.Cardinal rules: visual orientation perception reflects knowledge of environmental statistics.A functional and perceptual signature of the second visual area in primatesOrigin and Function of Tuning Diversity in Macaque Visual CortexRepresentation of Naturalistic Image Structure in the Primate Visual CortexPartitioning neuronal variability.A model-based spike sorting algorithm for removing correlation artifacts in multi-neuron recordings.Vision and the statistics of the visual environment.Metamers of the ventral stream.Mapping nonlinear receptive field structure in primate retina at single cone resolution.Modeling the impact of common noise inputs on the network activity of retinal ganglion cellsSelectivity and tolerance for visual texture in macaque V2.Spatio-temporal correlations and visual signalling in a complete neuronal populationAttention stabilizes the shared gain of V4 populations.Least squares estimation without priors or supervision.Image denoising using scale mixtures of Gaussians in the wavelet domain.A unified framework and method for automatic neural spike identification.Near-optimal integration of orientation information across saccades.Nonlinear Image Representation Using Divisive Normalization.Visual motion aftereffects arise from a cascade of two isomorphic adaptation mechanismsEfficient coding of natural images with a population of noisy Linear-Nonlinear neuronsMaximum differentiation (MAD) competition: a methodology for comparing computational models of perceptual quantitiesImplicit encoding of prior probabilities in optimal neural populationsEfficient and direct estimation of a neural subunit model for sensory coding.Efficient sensory encoding and Bayesian inference with heterogeneous neural populations.Is the homunculus "aware" of sensory adaptation?Optimal denoising in redundant representations.Image modeling and denoising with orientation-adapted Gaussian scale mixtures.A Bayesian Model of Conditioned PerceptionReducing statistical dependencies in natural signals using radial Gaussianization.Modeling multiscale subbands of photographic images with fields of Gaussian scale mixtures.Optimal inference explains the perceptual coherence of visual motion stimuli.Eigen-Distortions of Hierarchical Representations
P50
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P50
description
American computational neuroscientist
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Eero P Simoncelli
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Eero Simoncelli
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Eero P Simoncelli
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Eero P Simoncelli
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Eero P Simoncelli
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Eero Simoncelli
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Eero Simoncelli
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Eero Simoncelli
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Eero Simoncelli
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P106
P214
P244
P21
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P244
n2008182949
P2456
P2798
P31
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lccn-n2008182949