Next-generation neural computations
Next-generation neural computations
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Matching Pursuit
An adaptive homeostatic algorithm for the unsupervised learning of visual features
The formation of structure in the visual system, that is, of the connections between cells within neural populations, is by large an …
Laurent U Perrinet
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Role of homeostasis in learning sparse representations
Neurons in the input layer of primary visual cortex in primates develop edge-like receptive fields. One approach to understanding the …
Laurent U Perrinet
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arXiv
Adaptive Sparse Spike Coding : applications of Neuroscience to the compression of natural images
If modern computers are sometimes superior to cognition in some specialized tasks such as playing chess or browsing a large database, …
Laurent U Perrinet
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arXiv
Dynamical Neural Networks: modeling low-level vision at short latencies
The machinery behind the visual perception of motion and the subsequent sensori-motor transformation, such as in ocular following …
Laurent U Perrinet
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Input-output transformation in the visuo-oculomotor loop: modeling the ocular following response to center-surround stimulation in a probabilistic framework
The quality of the representation of an object’s motion is limited by the noise in the sensory input as well as by an intrinsic …
Laurent U Perrinet
,
Frédéric v Barthélemy
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Guillaume S Masson
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Efficient representation of natural images using local cooperation
Low-level perceptual computations may be understood in terms of efficient codes (Simoncelli and Olshausen, 2001, Annual Review of …
Sylvain Fischer
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Rafael Redondo
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Laurent U Perrinet
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Gabriel Cristóbal
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Coding static natural images using spiking event times: do neurons cooperate?
To understand possible strategies of temporal spike coding in the central nervous system, we study functional neuromimetic models of …
Laurent U Perrinet
,
Manuel Samuelides
,
Simon Thorpe
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arXiv
Feature detection using spikes : the greedy approach
A goal of low-level neural processes is to build an efficient code extracting the relevant information from the sensory input. It is …
Laurent U Perrinet
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arXiv
Sparse spike coding in an asynchronous feed-forward multi-layer neural network using matching pursuit
Laurent U Perrinet
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Manuel Samuelides
,
Simon Thorpe
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