International audienceSparse signal decomposition are keys to efficient compression, storage and denoising, but they lack appropriate methods to exploit this sparsity for a classification purpose. Sparse coding methods based on dictionary learning may result in spikegrams, a sparse and temporal representation of signals by a raster of kernel occurrence through time. This paper proposes a method for coupling spike train cost based metrics (from neuroscience) with a spikegram sparse decompositions for clustering multivariate signals. Experiments on character trajectories, recorded by sensors from natural handwriting, prove the validity of the approach, compared with currently available classification performance in literature
Neural coding and memory formation depend on temporal spiking sequences that span high-dimensional n...
This paper introduces a signal classification framework that can be used for brain-computer interfac...
Spiking Neural Networks (SNNs), known for their potential to enable low energy consumption and compu...
Sparse signal decompositions are keys to efficient compression, storage and denoising, but they lack...
International audienceSparse signal decomposition are keys to efficient compression, storage and den...
International audienceWe describe in this paper advanced protocols for the discrimination and classi...
International audienceMany of the multichannel extracellular recordings of neural activity consist o...
We propose an unsupervised compressed sensing (CS)-based framework to compress, recover, and cluster...
On one hand, sparse coding, which is widely used in signal proces-sing, consists of representing sig...
International audienceOn one hand, sparse coding, which is widely used in signal processing, consist...
The detection of neural spikes plays an important role in studying and processing extracellular reco...
Copyright © 2014 V. Vigneron and H. Chen. This is an open access article distributed under the Creat...
International audienceIf modern computers are sometimes superior to humans in some specialized tasks...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
Abstract—The theory of Compressive Sensing (CS) exploits a well-known concept used in signal compres...
Neural coding and memory formation depend on temporal spiking sequences that span high-dimensional n...
This paper introduces a signal classification framework that can be used for brain-computer interfac...
Spiking Neural Networks (SNNs), known for their potential to enable low energy consumption and compu...
Sparse signal decompositions are keys to efficient compression, storage and denoising, but they lack...
International audienceSparse signal decomposition are keys to efficient compression, storage and den...
International audienceWe describe in this paper advanced protocols for the discrimination and classi...
International audienceMany of the multichannel extracellular recordings of neural activity consist o...
We propose an unsupervised compressed sensing (CS)-based framework to compress, recover, and cluster...
On one hand, sparse coding, which is widely used in signal proces-sing, consists of representing sig...
International audienceOn one hand, sparse coding, which is widely used in signal processing, consist...
The detection of neural spikes plays an important role in studying and processing extracellular reco...
Copyright © 2014 V. Vigneron and H. Chen. This is an open access article distributed under the Creat...
International audienceIf modern computers are sometimes superior to humans in some specialized tasks...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
Abstract—The theory of Compressive Sensing (CS) exploits a well-known concept used in signal compres...
Neural coding and memory formation depend on temporal spiking sequences that span high-dimensional n...
This paper introduces a signal classification framework that can be used for brain-computer interfac...
Spiking Neural Networks (SNNs), known for their potential to enable low energy consumption and compu...