We will present a cost-effective and flexible realization of high performance computing (HPC) clustering and its potential in solving computationally intensive problems in computer vision. The featured software foundation to support the parallel programming is the GNU parallel Knoppix package with message passing interface (MPI) based Octave, Python and C interface capabilities. The implementation is especially of interest in applications where the main objective is to reuse the existing hardware infrastructure and to maintain the overall budget cost. We will present the benchmark results and compare and contrast the performances of Octave and MATLAB
Most cpu consuming tasks in photogrammetric processing can be done in parallel. The algorithms take ...
<p>Clustering can be considered the most important unsupervised learning<br>technique. Clustering is...
The current state and foreseeable future of high performance scientific computing (HPC) can be descr...
We will present a cost-effective and flexible realization of high performance computing (HPC) cluste...
We describe a project that integrates applications requirements, parallel algorithm design, models o...
With the limits to frequency scaling in microprocessors due to power constraints, many-core and mult...
International audiencek-means is a standard algorithm for clustering data. It constitutes generally ...
Computational requirements for computer vision algorithms have been increasing dramatically at a rat...
Vision is a challenging application for high-performance computing (HPC). Many vision tasks have str...
International audienceSummary k-Means is a standard algorithm for clustering data. It constitutes ge...
A critical problem in implementing interactive perception applica-tions is the considerable computat...
The parallel programming come a long way with the advances in the HPC. The high performance computin...
The purpose of this thesis is to investigate the methods of implementing a section of a Matlab hyper...
Clustering approaches are widely used methodologies to analyse large data sets. The K-means algorith...
Conference of 12th IEEE International Conference on Embedded and Ubiquitous Computing, EUC 2014 ; Co...
Most cpu consuming tasks in photogrammetric processing can be done in parallel. The algorithms take ...
<p>Clustering can be considered the most important unsupervised learning<br>technique. Clustering is...
The current state and foreseeable future of high performance scientific computing (HPC) can be descr...
We will present a cost-effective and flexible realization of high performance computing (HPC) cluste...
We describe a project that integrates applications requirements, parallel algorithm design, models o...
With the limits to frequency scaling in microprocessors due to power constraints, many-core and mult...
International audiencek-means is a standard algorithm for clustering data. It constitutes generally ...
Computational requirements for computer vision algorithms have been increasing dramatically at a rat...
Vision is a challenging application for high-performance computing (HPC). Many vision tasks have str...
International audienceSummary k-Means is a standard algorithm for clustering data. It constitutes ge...
A critical problem in implementing interactive perception applica-tions is the considerable computat...
The parallel programming come a long way with the advances in the HPC. The high performance computin...
The purpose of this thesis is to investigate the methods of implementing a section of a Matlab hyper...
Clustering approaches are widely used methodologies to analyse large data sets. The K-means algorith...
Conference of 12th IEEE International Conference on Embedded and Ubiquitous Computing, EUC 2014 ; Co...
Most cpu consuming tasks in photogrammetric processing can be done in parallel. The algorithms take ...
<p>Clustering can be considered the most important unsupervised learning<br>technique. Clustering is...
The current state and foreseeable future of high performance scientific computing (HPC) can be descr...