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Slow Feature Analysis on Retinal Waves Leads to V1 Complex Cells
Authors:Sven D?hne  Niko Wilbert  Laurenz Wiskott
Affiliation:1.Machine Learning Group, Department of Computer Science, Berlin Institute of Technology, Berlin, Germany;2.Institute for Theoretical Biology, Humboldt-University, Berlin, Germany;3.Bernstein Center for Computational Neuroscience, Berlin, Germany;4.Institute for Neural Computation, Ruhr-University Bochum, Bochum, Germany;University of Rochester, United States of America
Abstract:The developing visual system of many mammalian species is partially structured and organized even before the onset of vision. Spontaneous neural activity, which spreads in waves across the retina, has been suggested to play a major role in these prenatal structuring processes. Recently, it has been shown that when employing an efficient coding strategy, such as sparse coding, these retinal activity patterns lead to basis functions that resemble optimal stimuli of simple cells in primary visual cortex (V1). Here we present the results of applying a coding strategy that optimizes for temporal slowness, namely Slow Feature Analysis (SFA), to a biologically plausible model of retinal waves. Previously, SFA has been successfully applied to model parts of the visual system, most notably in reproducing a rich set of complex-cell features by training SFA with quasi-natural image sequences. In the present work, we obtain SFA units that share a number of properties with cortical complex-cells by training on simulated retinal waves. The emergence of two distinct properties of the SFA units (phase invariance and orientation tuning) is thoroughly investigated via control experiments and mathematical analysis of the input-output functions found by SFA. The results support the idea that retinal waves share relevant temporal and spatial properties with natural visual input. Hence, retinal waves seem suitable training stimuli to learn invariances and thereby shape the developing early visual system such that it is best prepared for coding input from the natural world.
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