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A Space-Variant Visual Pathway Model for Data Efficient Deep Learning

Piotr Ozimek, Nina Hristozova, Lorinc Balog, J. Paul Siebert

Year
2019
Citations
8
Access
Open access

Abstract

We present an investigation into adopting a model of the retino-cortical mapping, found in biological visual systems, to improve the efficiency of image analysis using Deep Convolutional Neural Nets (DCNNs) in the context of robot vision and egocentric perception systems. This work has now enabled DCNNs to process input images approaching one million pixels in size, in real time, using only consumer grade graphics processor (GPU) hardware in a single pass of the DCNN.

Keywords

Computer scienceConvolutional neural networkArtificial intelligencePixelContext (archaeology)Computer visionGraphicsProcess (computing)PerceptionDeep learning

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