International audienceExtracting invariant features in an un-supervised manner is crucial to perform complex computation such as object recognition, analyzing music or understanding speech. While various algorithms have been proposed to perform such a task, Slow Feature Analysis (SFA) uses time as a means of detecting those invariants, extracting the slowly time-varying components in the input signals. In this work, we address the question of how such an algorithm can be implemented by neurons, and apply it in the context of audio stimuli. We propose a projected gradient implementation of SFA that can be adapted to a Hebbian like learning rule dealing with biologically plausible neuron models. Furthermore, we show that a Spike-Timing Depend...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
In speech processing, perceptually relevant temporal cues can require resolution of spectral transit...
<p>The process of how auditory neurons encode and learn to recognise speech signals is still an open...
International audienceExtracting invariant features in an un-supervised manner is crucial to perform...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extra...
Our nervous system can efficiently recognize objects in spite of changes in contextual variables suc...
It is open how neurons in the brain are able to learn without supervision to discrim-inate between s...
In this paper, we aim to develop novel learning approaches for extracting invariant features from ti...
The brain extracts useful features from a maelstrom of sensory information, and a fundamental goal o...
. Computational tasks in biological systems that require short response times can be implemented in ...
<p>The process of how auditory neurons encode and learn to recognise speech signals is still an open...
Spatiotemporal patterns, such as words in speech, are rarely precisely the same duration, yet a word...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
In this thesis, a new supervised learning algorithm for multilayer spiking neural networks is presen...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
In speech processing, perceptually relevant temporal cues can require resolution of spectral transit...
<p>The process of how auditory neurons encode and learn to recognise speech signals is still an open...
International audienceExtracting invariant features in an un-supervised manner is crucial to perform...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extra...
Our nervous system can efficiently recognize objects in spite of changes in contextual variables suc...
It is open how neurons in the brain are able to learn without supervision to discrim-inate between s...
In this paper, we aim to develop novel learning approaches for extracting invariant features from ti...
The brain extracts useful features from a maelstrom of sensory information, and a fundamental goal o...
. Computational tasks in biological systems that require short response times can be implemented in ...
<p>The process of how auditory neurons encode and learn to recognise speech signals is still an open...
Spatiotemporal patterns, such as words in speech, are rarely precisely the same duration, yet a word...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
In this thesis, a new supervised learning algorithm for multilayer spiking neural networks is presen...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
In speech processing, perceptually relevant temporal cues can require resolution of spectral transit...
<p>The process of how auditory neurons encode and learn to recognise speech signals is still an open...