International audienceConnected components labeling and analysis for dense images have been extensively studied on a wide range of architectures. Some applications, like particles detectors in High Energy Physics, need to analyse many small and sparse images at high throughput. Because they process all pixels of the image, classic algorithms for dense images are inefficient on sparse data. We address this inefficiency by introducing a new algorithm specifically designed for sparse images. We show that we can further improve this sparse algorithm by specializing it for the data input format, avoiding a decoding step and processing multiple pixels at once. A benchmark on Intel and AMD CPUs shows that the algorithm is from ×1.6 to ×2.5 faster ...
International audienceUntil recent years, labeling algorithms for GPUs have been iterative. This was...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
International audienceConnected components labeling and analysis for dense images have been extensiv...
International audienceOptimizing connected component labeling is currently a very active research fi...
International audience—Optimizing connected component labeling is cur-rently a very active research ...
Abstract—Optimizing connected component labeling is cur-rently a very active research field. Some te...
International audienceIn the last decade, many papers have been published to present sequential conn...
This paper presents two strategies that can be used to improve the speed of Connected Components Lab...
In this paper we propose a new paradigm for connected components labeling, which employs a general a...
Connected Components Labeling (CCL) is a fundamental image processing technique, widely used in vari...
This paper presents two new strategies to speed up connectedcomponent labeling algorithms. The first...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
The problem of labeling the connected components of a binary image is well-defined and several propo...
Connected Components Labeling (CCL) represents an essential part of many Image Processing and Comput...
International audienceUntil recent years, labeling algorithms for GPUs have been iterative. This was...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
International audienceConnected components labeling and analysis for dense images have been extensiv...
International audienceOptimizing connected component labeling is currently a very active research fi...
International audience—Optimizing connected component labeling is cur-rently a very active research ...
Abstract—Optimizing connected component labeling is cur-rently a very active research field. Some te...
International audienceIn the last decade, many papers have been published to present sequential conn...
This paper presents two strategies that can be used to improve the speed of Connected Components Lab...
In this paper we propose a new paradigm for connected components labeling, which employs a general a...
Connected Components Labeling (CCL) is a fundamental image processing technique, widely used in vari...
This paper presents two new strategies to speed up connectedcomponent labeling algorithms. The first...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
The problem of labeling the connected components of a binary image is well-defined and several propo...
Connected Components Labeling (CCL) represents an essential part of many Image Processing and Comput...
International audienceUntil recent years, labeling algorithms for GPUs have been iterative. This was...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
Image processing problems have always been challenging due to the complexity of the signal. These pr...