Parallelization of the Algorithm K-means Applied in Image Segmentation

Fecha
2014-01-01Autor
López Del Alamo, Cristian
Romero Calla, Luciano Arnaldo
Fuentes Pérez, Lizeth Joseline
Metadatos
Mostrar el registro completo del ítemResumen
Algorithm k-means is useful for grouping operations; however, when is applied to large amounts of data, its computational cost is high. This research propose an optimization of k-means algorithm by using parallelization techniques and synchronization, which is applied to image segmentation. In the results obtained, the parallel k-means algorithm, improvement 50% to the algorithm sequential k-means.

