No troubles with bubbles: a reply to Murray and Gold (original) (raw)

A Gestalt Bubble Model of Visuosptial Perception

Steven Lehar

1993

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Just bubbles?

Wlodzislaw Duch

Behavioral and Brain Sciences, 2003

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Temporal ���Bubbles��� reveal key features for point-light biological motion perception

Steven Thurman

2008

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Visual psychophysics

Oliver Braddick

Current Biology, 1997

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5. Probability Multiplication as a New Principle in Psychophysics

Charles Chubb

2005

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Sound-induced £ash illusion as an optimal percept

Ulrik Beierholm

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Efficiency of human and model observers for signal-detection tasks in non-Gaussian distributed lumpy backgrounds

Eric Clarkson

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Probability Multiplication as a New Principle in Psychophysics

Charles Chubb

Seeing Spatial Form, 2005

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Editorial: Using Noise to Characterize Vision

Jocelyn Faubert

Frontiers in Psychology, 2015

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Using “Bubbles” with babies: A new technique for investigating the informational basis of infant perception

Kate Humphreys

2006

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Interference in visual memory for abstract stimuli and everyday objects

Rhonda Shaw

2008

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The Müller-Lyer illusion as seen by an artificial neural network

Victor de Lafuente

Frontiers in Computational Neuroscience, 2015

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Informing Computer Vision with Optical Illusions

David Powers

2020

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Noise and the Perceptual Filling-in effect

Dennis Levi

Scientific reports, 2016

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Visual signal detectability with two noise components: anomalous masking effects

Xing Li

Journal of The Optical Society of America A-optics Image Science and Vision, 1997

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Seeing patterns in the noise

Eero P Simoncelli

Trends in Cognitive Sciences, 2003

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Observer theory, Bayes theory, and psychophysics

Donald Hoffman

Perception as Bayesian Inference

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Efficiency of the human observer detecting random signals in random backgrounds

Eric Clarkson

Journal of the Optical Society of America A, 2005

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Psychophysical effects in double-slit interference patterns: Response to a critique

Dean Radin

2019

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Gestalt isomorphism and the primacy of subjective conscious experience: A Gestalt Bubble model

Steven Lehar

Behavioral and Brain Sciences, 2003

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Clarifying signal detection theoretic interpretations of the Müller-Lyer and sound-induced flash illusions

Ladan Shams

Journal of vision, 2016

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Disambiguating the Stream/Bounce Illusion With Inference

Philip Grove

Multisensory Research, 2016

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Response to Wilson & Wilkinson: Evidence for Global Processing but No Evidence for Specialised Detectors In the Visual Processing of Glass Patterns

Steven Dakin

Vision Research, 2003

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Applying Bubbles to Localize Features That Control Pigeons' Visual Discrimination Behavior

Edward P Wasserman

Journal of Experimental Psychology: Animal Behavior Processes, 2005

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Abnormal Science for Abnormal Perception: A Case for Theoretical Cognitive Science via a Case Study of Narrow Slit Viewing

David Pierre Leibovitz

2013

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A new illusion demonstrates long-range processing

Dennis Levi

Vision Research, 2000

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Understanding human perception by human-made illusions

Claus-Christian Carbon

Frontiers in human neuroscience, 2014

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Neural Correlates of Multidimensional Visualizations: An fMRI Comparison of Bubble and Three-Dimensional Surface Graphs Using Evolutionary Theory

Elshan Moradiabadi

MIS Quarterly, 2018

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Towards the understanding of bubble interactions and coalescence in non-Newtonian &uids: a cognitive approach

Huai Z Li

Chem Eng Sci, 2001

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Paradoxical psychometric functions ("swan functions") are explained by dilution masking in four stimulus dimensions

Tim Meese

i-Perception, 2013

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Psychophysics of Autostereogram Videos: Contrast, Repetition, Blur and Colour

Bob Fisher

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Errors in interception can be predicted from errors in perception

Jeroen Smeets

Cortex; a journal devoted to the study of the nervous system and behavior, 2017

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Addition of a channel mechanism to the ideal-observer model

Kyle Myers

Journal of the Optical Society of America A, 1987

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Efficiency of the human observer for detecting a Gaussian signal at a known location in non-Gaussian distributed lumpy backgrounds

Kyle Myers

Journal of the Optical Society of America A, 2007

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CURIOUS BUBBLES AND VAGUE WORLD CONTEXTS

Gabriele Mackert

Point of View. Laurien Bachmann, 2021

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