Our work is a contribution of the parallelization of the Watershed Transform in particular the Watershed cuts which are a notion of watershed introduced in the framework of Edge Weighted Graphs. We have developed a state of art on the sequential watershed algorithms in order to motivate the choice of the algorithm that is the subject of our study, which is the M-border Kernel algorithm. The main objective of this thesis is to parallelize this algorithm in order to reduce its running time. First, we presented a review on the works that have treated the parallelization of the different types of Watershed in order to identify the issues raised by this task and the appropriate solutions to our context. In a second place, we have shown that desp...
The watershed algorithm is a method for image segmentation widely used in the area of mathematical m...
The parallel watershed transformation used in gray-scale image segmentation is here augmented to per...
Finding clusters in point clouds and matching graphs to graphs are recurrent tasks in computer scien...
Our work is a contribution of the parallelization of the Watershed Transform in particular the Water...
Notre travail s'inscrit dans le cadre de la parallélisation d’algorithmes de calcul de la Ligne de P...
International audienceWatershed Transform is a widely used image segmentation technique that is know...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm has b...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm is im...
The watershed transformation is a popular image segmentation algorithm for grey scale images. Sequen...
The watershed transformation is a mid-level operation used in morphological image segmentation. Tech...
In this paper a parallel implementation of a watershed algorithm is proposed. The algorithm can easi...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm has b...
An important aspect of designing a parallel algorithm is exploitation of the data locality for minim...
The watershed algorithm is a method for image segmentation widely used in the area of mathematical m...
The parallel watershed transformation used in gray-scale image segmentation is here augmented to per...
Finding clusters in point clouds and matching graphs to graphs are recurrent tasks in computer scien...
Our work is a contribution of the parallelization of the Watershed Transform in particular the Water...
Notre travail s'inscrit dans le cadre de la parallélisation d’algorithmes de calcul de la Ligne de P...
International audienceWatershed Transform is a widely used image segmentation technique that is know...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm has b...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm is im...
The watershed transformation is a popular image segmentation algorithm for grey scale images. Sequen...
The watershed transformation is a mid-level operation used in morphological image segmentation. Tech...
In this paper a parallel implementation of a watershed algorithm is proposed. The algorithm can easi...
In this paper the implementation of a parallel watershed algorithm is described. The algorithm has b...
An important aspect of designing a parallel algorithm is exploitation of the data locality for minim...
The watershed algorithm is a method for image segmentation widely used in the area of mathematical m...
The parallel watershed transformation used in gray-scale image segmentation is here augmented to per...
Finding clusters in point clouds and matching graphs to graphs are recurrent tasks in computer scien...