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Neural Network Models Binocular

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SeminarPast EventNeuroscience

Neural network models of binocular depth perception

Paul Hibbard

Prof

University of Essex

Schedule
Tuesday, November 30, 2021

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Tuesday, November 30, 2021

2:00 PM Europe/London

Host: CompCogSci Darmstadt

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Past Seminar

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CompCogSci Darmstadt

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Abstract

Our visual experience of living in a three-dimensional world is created from the information contained in the two-dimensional images projected into our eyes. The overlapping visual fields of the two eyes mean that their images are highly correlated, and that the small differences that are present represent an important cue to depth. Binocular neurons encode this information in a way that both maximises efficiency and optimises disparity tuning for the depth structures that are found in our natural environment. Neural network models provide a clear account of how these binocular neurons encode the local binocular disparity in images. These models can be expanded to multi-layer models that are sensitive to salient features of scenes, such as the orientations and discontinuities between surfaces. These deep neural network models have also shown the importance of binocular disparity for the segmentation of images into separate objects, in addition to the estimation of distance. These results demonstrate the usefulness of machine learning approaches as a tool for understanding biological vision.

Topics

binocular depth perceptionbinocular neuronscognitiondisparity tuningimage segmentationlocal binocular disparitymachine learningneural network modelsperceptionthree-dimensional visionvisionvisual fields

About the Speaker

Paul Hibbard

Prof

University of Essex

Contact & Resources

Personal Website

www.essex.ac.uk/people/hibba21102/paul-hibbard

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