Kohonen Self-Organizing maps are interesting computational structures because of their original properties, including adaptive topology and competition, their biological plausibility and their successful applications to a variety of real-world applications. In this paper, this neuronal model is presented, together with its possible implementation with a variational approach. We then explain why, beyond the interest for understanding the visual cortex, this approach is also interesting for making easier and more efficient the choice of this neuronal technique for real-world applications
Many of the properties of the well-known Kohonen map algorithm are not easily derivable from its dis...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
International audienceSelf-organizing maps (SOM) are a well-known and biologically plausible model o...
Kohonen Self-Organizing maps are interesting computational structures because of their original prop...
International audienceDuring the last years, Deep Neural Networks have reached the highest performan...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
As the quest for ever more powerful computing systems faces ever-increasing material constraints, ma...
International audienceThis paper presents the self-organized neuromorphic architecture named SOMA. T...
Since its introduction in 1982, Kohonen’s Self-Organizing Map (SOM) showed its ability to classify a...
International audienceThis work provides theoretical conditions guaranteeing that a self-organizing ...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
This paper presents a generalized framework of a self-organizing map (SOM) applicable to more extend...
Self-organizing maps are extremely useful in the field of pattern recognition. They become less usef...
The Self-Organizing Map (SOM) is a subtype of artificial neural networks [1]. It is trained using un...
Self-organizing maps (SOMs) have become popular for tasks in data visualization, pattern classificat...
Many of the properties of the well-known Kohonen map algorithm are not easily derivable from its dis...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
International audienceSelf-organizing maps (SOM) are a well-known and biologically plausible model o...
Kohonen Self-Organizing maps are interesting computational structures because of their original prop...
International audienceDuring the last years, Deep Neural Networks have reached the highest performan...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
As the quest for ever more powerful computing systems faces ever-increasing material constraints, ma...
International audienceThis paper presents the self-organized neuromorphic architecture named SOMA. T...
Since its introduction in 1982, Kohonen’s Self-Organizing Map (SOM) showed its ability to classify a...
International audienceThis work provides theoretical conditions guaranteeing that a self-organizing ...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
This paper presents a generalized framework of a self-organizing map (SOM) applicable to more extend...
Self-organizing maps are extremely useful in the field of pattern recognition. They become less usef...
The Self-Organizing Map (SOM) is a subtype of artificial neural networks [1]. It is trained using un...
Self-organizing maps (SOMs) have become popular for tasks in data visualization, pattern classificat...
Many of the properties of the well-known Kohonen map algorithm are not easily derivable from its dis...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
International audienceSelf-organizing maps (SOM) are a well-known and biologically plausible model o...