Contrary to the traditional clustering methods (often based on parametric models), a recently popular non-parametric method, spectral clustering (SC), employs eigendecomposition of pairwise similarities, and has been shown successful. Despite the advantages of spectral clustering, due to its computational and spatial complexity, its use in remote sensing applications is possible only through approximate spectral clustering (ASC), i.e. SC of the data representatives obtained by quantization or sampling. In this study, we show that, compared to other quantization methods, neural network (self-organizing map or neural gas) based quantization produces better quantization for ASC, to achieve high clustering accuracies.JRC.DDG.H.4-Monitoring agri...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Unlike conventional unsupervised classification methods, such as K-means and ISODATA, which are base...
The wealth spatial and spectral information available from last-generation Earth observation instrum...
Spectral partitioning, recently popular for unsupervised clustering, is infeasible for large dataset...
Spectral clustering (SC) is one of the most popular clustering methods and often outperforms traditi...
Saalbach A, Twellmann T, Nattkemper TW. Spectral Clustering for Data Categorization based on Self-Or...
International audienceClassification of remotely sensed data is an important task for many practical...
A powerful method in knowledge discovery and cluster extraction is the use of self-organizing maps (...
Abstract : This work is concerned with the development and application of novel unsupervised learnin...
In this paper we test the performance of two unsupervised clustering strategies for the analysis of ...
In the following paper, new approaches are described for the classification and the cluster analysis...
[[abstract]]This paper presents a two-stage approach to classify remotely sensed imagery. At the fir...
In supervised deep learning, learning good representations for remote-sensing images (RSI) relies on...
Remote sensing can be defined as the technique that facilitates the acquisition of land surface data...
We investigate the use of artificial neural networks in classifying hyperspectral data. Such data wh...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Unlike conventional unsupervised classification methods, such as K-means and ISODATA, which are base...
The wealth spatial and spectral information available from last-generation Earth observation instrum...
Spectral partitioning, recently popular for unsupervised clustering, is infeasible for large dataset...
Spectral clustering (SC) is one of the most popular clustering methods and often outperforms traditi...
Saalbach A, Twellmann T, Nattkemper TW. Spectral Clustering for Data Categorization based on Self-Or...
International audienceClassification of remotely sensed data is an important task for many practical...
A powerful method in knowledge discovery and cluster extraction is the use of self-organizing maps (...
Abstract : This work is concerned with the development and application of novel unsupervised learnin...
In this paper we test the performance of two unsupervised clustering strategies for the analysis of ...
In the following paper, new approaches are described for the classification and the cluster analysis...
[[abstract]]This paper presents a two-stage approach to classify remotely sensed imagery. At the fir...
In supervised deep learning, learning good representations for remote-sensing images (RSI) relies on...
Remote sensing can be defined as the technique that facilitates the acquisition of land surface data...
We investigate the use of artificial neural networks in classifying hyperspectral data. Such data wh...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Unlike conventional unsupervised classification methods, such as K-means and ISODATA, which are base...
The wealth spatial and spectral information available from last-generation Earth observation instrum...