The main goal of this work is to denoise 3D confocal microscope scans of neuronal cells taken at high resolution such that neuronal structures of size smaller than 1¯m become visible. Although scanning confocal microscopes give much clearer images than ordinary light microscopes do, the images are still noisy and blurred. Our goal is to filter out the noise in these images without disturbing the smallest neuronal structures which have the same signal amplitude and geometric size as the noise. In order to obtain a good scale-space representation of the analyzed image, we use the 3D-wavelet transformation. We extend the denoising method of Donoho 1 for 3D data and obtain several ways of computing thresholds and noise variances. Finally we dev...
In this work we propose a modified version of the BM3D algorithm recently introduced by Dabov et al....
In this paper we present a method to solve a problem of brightness changes within a stack of images ...
This version contains the updated results of the article " Deep-learning based denoising and reconst...
AbstractDeconvolution algorithms have proven very effective in conventional (wide-field) fluorescenc...
Revised version published in: IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 11, NO. 7, JULY 2002, S....
International audienceWe propose in this paper an iterative algorithm for 3D confocal microcopy imag...
An algorithm based on the Haar wavelet basis and implementing an expectation maximization-maximum pe...
This paper presents a new multiscale method to denoise three-dimensional images of cell nuclei. The ...
We propose a deconvolution algorithm for images blurred and degraded by a Poisson noise. The algorit...
WOS: 000351588900005In order to overcome blurring due to microscope optics in fluorescence microscop...
Confocal microscopy has become an essential tool to explore biospecimens in 3D. Confocal microcopy i...
The morphological analysis of single identified neurons provides an important anatomical basis for n...
International audienceWe propose a deconvolution algorithm for images blurred and degraded by a Pois...
Confocal Microscopy is valuable for its ability to image thick sections of intact tissue. A compelli...
In this paper, we present an algorithm to create 3D segmentations of neuronal cells from stacks of p...
In this work we propose a modified version of the BM3D algorithm recently introduced by Dabov et al....
In this paper we present a method to solve a problem of brightness changes within a stack of images ...
This version contains the updated results of the article " Deep-learning based denoising and reconst...
AbstractDeconvolution algorithms have proven very effective in conventional (wide-field) fluorescenc...
Revised version published in: IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 11, NO. 7, JULY 2002, S....
International audienceWe propose in this paper an iterative algorithm for 3D confocal microcopy imag...
An algorithm based on the Haar wavelet basis and implementing an expectation maximization-maximum pe...
This paper presents a new multiscale method to denoise three-dimensional images of cell nuclei. The ...
We propose a deconvolution algorithm for images blurred and degraded by a Poisson noise. The algorit...
WOS: 000351588900005In order to overcome blurring due to microscope optics in fluorescence microscop...
Confocal microscopy has become an essential tool to explore biospecimens in 3D. Confocal microcopy i...
The morphological analysis of single identified neurons provides an important anatomical basis for n...
International audienceWe propose a deconvolution algorithm for images blurred and degraded by a Pois...
Confocal Microscopy is valuable for its ability to image thick sections of intact tissue. A compelli...
In this paper, we present an algorithm to create 3D segmentations of neuronal cells from stacks of p...
In this work we propose a modified version of the BM3D algorithm recently introduced by Dabov et al....
In this paper we present a method to solve a problem of brightness changes within a stack of images ...
This version contains the updated results of the article " Deep-learning based denoising and reconst...