In this work, we describe our approach of combining the most effective ideas and tools developed during the past years to build a variational 3D deconvolution system that can be successfully em-ployed in fluorescence microscopy. In particular, the main compo-nents of our deconvolution system involve proper handling of image boundaries, choice of a regularizer that is best suited to biological images, and use of an optimization algorithm that can be efficiently implemented on graphics processing units (GPUs) and fully bene-fit from their massive parallel computational capabilities. We show that our system leads to very competitive results and reduces the computational time by at least one order of magnitude compared to a CPU implementation. ...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
D econvolution of three-dimensional (3-D) fluorescence microscopy images using computational restora...
International audienceImages in fluorescence microscopy are inherently blurred due to the limit of d...
OAPA We develop a fast algorithm for segmenting 3D images from linear measurements based on the Pott...
We develop a fast algorithm for segmenting 3D images from linear measurements based on the Potts mod...
We investigate the problem of automatic tuning of a deconvolution algorithm for three-dimensional (3...
In many imaging applications the image formation process is influenced by the physics of the imaging...
Cellular and molecular biology seek to understand complex cellular functions and cell interaction wi...
In many imaging applications the image formation process is influenced by the physics of the imaging...
The subject of this thesis is image restoration, that is, deconvolution and denoising. Our work is m...
International audienceModern fluorescent microscopy imaging is still limited by the optical aberrati...
We present the results of super-resolution deconvolution of fluorescent intracellular images using t...
We investigate the problem of automatic tuning of a decon-volution algorithm for three-dimensional (...
Abstract. Fluorescence microscopy methods are an important imaging tech-nique in cell biology. Due t...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
D econvolution of three-dimensional (3-D) fluorescence microscopy images using computational restora...
International audienceImages in fluorescence microscopy are inherently blurred due to the limit of d...
OAPA We develop a fast algorithm for segmenting 3D images from linear measurements based on the Pott...
We develop a fast algorithm for segmenting 3D images from linear measurements based on the Potts mod...
We investigate the problem of automatic tuning of a deconvolution algorithm for three-dimensional (3...
In many imaging applications the image formation process is influenced by the physics of the imaging...
Cellular and molecular biology seek to understand complex cellular functions and cell interaction wi...
In many imaging applications the image formation process is influenced by the physics of the imaging...
The subject of this thesis is image restoration, that is, deconvolution and denoising. Our work is m...
International audienceModern fluorescent microscopy imaging is still limited by the optical aberrati...
We present the results of super-resolution deconvolution of fluorescent intracellular images using t...
We investigate the problem of automatic tuning of a decon-volution algorithm for three-dimensional (...
Abstract. Fluorescence microscopy methods are an important imaging tech-nique in cell biology. Due t...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
In this work, we generalize the sparse variation (SV) combining the total-variation (TV) and the L 1...
D econvolution of three-dimensional (3-D) fluorescence microscopy images using computational restora...