International audiencePiecewise signals appear in many application fields. Here, we propose a framework for segmenting such signals based on the modeling of each piece using a parametric probability distribution. The proposed framework first models the segmentation as an optimization problem with sparsity regularization. Then, an algorithm based on dynamic programming is utilized for finding the optimal solution. However, dynamic programming often suffers from a heavy computational burden. Therefore, we further show that the proposed framework is parallelizable and propose using GPU-based parallel computing to accelerate the computation. This approach is highly desirable for the analysis of large volumes of data w...
We describe and propose an implementation of a dynamic programming algorithm for the segmentation of...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
Abstract. Unsupervised Image Segmentation is one of the central issues in Computer Vision. From the ...
International audiencePiecewise signals appear in many application fields. Here, we propose...
International audienceTo analyze the next generation sequencing data, the so-called read depth signa...
As technology progresses, the processors used for statistical computation are not getting faster: th...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
One of the most ambitious trends in current biomedical research is the large-scale genomic sequencin...
National audienceDynamic Programming (DP) based change-point methods have shown very good statistica...
Abstract. We introduce a novel generative probabilistic model for segmentation problems in molecular...
Trabajo presentado al 4th International Workshop on Parallelism in Bioinformatics (euro-Par), celebr...
Abstract. This contribution shows how unsupervised Markovian segmentation techniques can be accelera...
Life-logging video streams, financial time series, and Twitter tweets are a few examples of high-dim...
In the current study we present a parallel statistical algorithm (SHMap), which distinguishes DNA re...
Novel high throughput sequencing technologies have redefined the way genome sequencing is performed....
We describe and propose an implementation of a dynamic programming algorithm for the segmentation of...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
Abstract. Unsupervised Image Segmentation is one of the central issues in Computer Vision. From the ...
International audiencePiecewise signals appear in many application fields. Here, we propose...
International audienceTo analyze the next generation sequencing data, the so-called read depth signa...
As technology progresses, the processors used for statistical computation are not getting faster: th...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
One of the most ambitious trends in current biomedical research is the large-scale genomic sequencin...
National audienceDynamic Programming (DP) based change-point methods have shown very good statistica...
Abstract. We introduce a novel generative probabilistic model for segmentation problems in molecular...
Trabajo presentado al 4th International Workshop on Parallelism in Bioinformatics (euro-Par), celebr...
Abstract. This contribution shows how unsupervised Markovian segmentation techniques can be accelera...
Life-logging video streams, financial time series, and Twitter tweets are a few examples of high-dim...
In the current study we present a parallel statistical algorithm (SHMap), which distinguishes DNA re...
Novel high throughput sequencing technologies have redefined the way genome sequencing is performed....
We describe and propose an implementation of a dynamic programming algorithm for the segmentation of...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
Abstract. Unsupervised Image Segmentation is one of the central issues in Computer Vision. From the ...