Fuzzy joint points (FJP) is a fully unsupervised neighborhood-based clustering method that uses a fuzzy neighborhood relationship and overcomes the parameter selection problem of classical neighborhood based clustering algorithms. The present work introduces a paralel implementation of the FJP algorithm on GPU using CUDA in order to reducing the processing time. Provided experimental results confirm a speed up of around 8 times over serial implementation is achieved in the GPU-parallel implementation of the FJP algorithm. So, the work shows that the GPU implementation of the FJP algorithm is a viable option if a speedup is needed
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...
Using fuzzy neighborhood relations in density-based clustering, like in Fuzzy Joint Points (FJP) alg...
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...
Fuzzy joint points (FJP) is a fully unsupervised neighborhood-based clustering method that uses a fu...
Clustering is a classification method that organizes objects into groups based on their similarity. ...
The main purpose of this paper is to achieve improvement in the speed of Fuzzy Joint Points (FJP) al...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
Graphics processing units (GPUs) are powerful com-putational devices tailored towards the needs of t...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
<p>Clustering can be considered the most important unsupervised learning<br>technique. Clustering is...
The purpose of this paper is to describe the key points of the implementation of clustering algorith...
Image segmentation techniques using fuzzy connectedness principles have shown their effectiveness in...
In this paper, we studied the parallelization of K-Means clustering algorithm, proposed a parallel s...
Applying fuzzy logic to clustering techniques leads to more robust and autonomous methods like the f...
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...
Using fuzzy neighborhood relations in density-based clustering, like in Fuzzy Joint Points (FJP) alg...
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...
Fuzzy joint points (FJP) is a fully unsupervised neighborhood-based clustering method that uses a fu...
Clustering is a classification method that organizes objects into groups based on their similarity. ...
The main purpose of this paper is to achieve improvement in the speed of Fuzzy Joint Points (FJP) al...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
Graphics processing units (GPUs) are powerful com-putational devices tailored towards the needs of t...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
<p>Clustering can be considered the most important unsupervised learning<br>technique. Clustering is...
The purpose of this paper is to describe the key points of the implementation of clustering algorith...
Image segmentation techniques using fuzzy connectedness principles have shown their effectiveness in...
In this paper, we studied the parallelization of K-Means clustering algorithm, proposed a parallel s...
Applying fuzzy logic to clustering techniques leads to more robust and autonomous methods like the f...
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...
Using fuzzy neighborhood relations in density-based clustering, like in Fuzzy Joint Points (FJP) alg...
In this paper we propose a novel hardware implementation for a bidimensional unconstrained hierarchi...