We propose a Hebbian learning-based data clustering algorithm using spiking neurons. The algorithm is capable of distinguishing between clusters and noisy background data and finds an arbitrary number of clusters of arbitrary shape. These properties render the approach particularly useful for visual scene segmentation into arbitrarily shaped homogeneous regions. We present several application examples, and in order to highlight the advantages and the weaknesses of our method, we systematically compare the results with those from standard methods such as the k-means and Ward's linkage clustering. The analysis demonstrates that not only the clustering ability of the proposed algorithm is more powerful than those of the two concurrent methods,...
Clustering is a fundamental data processing technique. While clustering of static (vector based) dat...
AbstractIn Self-Organizing Maps (SOM) learning, preserving the map topology to simulate the real inp...
Determining the structure of data without prior knowledge of the number of clusters or any informati...
We propose a Hebbian learning-based data clustering algorithm using spiking neurons. The algorithm i...
textabstractWe demonstrate that spiking neural networks encoding information in spike times are capa...
This paper focuses on the architecture and learning algorithm associated with using a new self-organ...
Neurological research shows that the biological neurons store information in the timing of spikes. S...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
A Biological Neural Network or simply BNN is an artificial abstract model of different parts of the...
An improved method for constructing and training single-layered spiking neural networks is preposed....
International audienceArtificial neural networks have been well developed so far. First two generati...
When dealing with high-dimensional measurements that often show non-linear characteristics at multip...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
International audienceThe process of segmenting images is one of the most critical ones in automatic...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
Clustering is a fundamental data processing technique. While clustering of static (vector based) dat...
AbstractIn Self-Organizing Maps (SOM) learning, preserving the map topology to simulate the real inp...
Determining the structure of data without prior knowledge of the number of clusters or any informati...
We propose a Hebbian learning-based data clustering algorithm using spiking neurons. The algorithm i...
textabstractWe demonstrate that spiking neural networks encoding information in spike times are capa...
This paper focuses on the architecture and learning algorithm associated with using a new self-organ...
Neurological research shows that the biological neurons store information in the timing of spikes. S...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
A Biological Neural Network or simply BNN is an artificial abstract model of different parts of the...
An improved method for constructing and training single-layered spiking neural networks is preposed....
International audienceArtificial neural networks have been well developed so far. First two generati...
When dealing with high-dimensional measurements that often show non-linear characteristics at multip...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
International audienceThe process of segmenting images is one of the most critical ones in automatic...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
Clustering is a fundamental data processing technique. While clustering of static (vector based) dat...
AbstractIn Self-Organizing Maps (SOM) learning, preserving the map topology to simulate the real inp...
Determining the structure of data without prior knowledge of the number of clusters or any informati...