International audienceThe method proposed in this paper is a robust combination of multi-task learning and unsupervised domain adaptation for segmenting amoeboid cells in microscopy. A highlight of this work is the manner in which the model’s hyperparameters are estimated. The detriments of ad-hoc parameter estimation are well known, but this issue remains largely unaddressed in the context of CNN-based segmentation. Using a novel min-max formulation of the segmentation cost function our proposed method analytically estimates the model’s hyperparameters, while simultaneously learning the CNN weights during training. This end-to-end framework provides a consolidated mechanism to harness the potential of multi-task learning to isolate and seg...
International audienceAccurately detecting subcellular particles in fluorescence microscopy is of pr...
Living cell segmentation from bright-field light microscopy images is challenging due to the image c...
Detection and segmentation of macrophage cells in fluorescence microscopy images is a challenging pr...
Automatic cell segmentation in microscopy images works well with the support of deep neural networks...
Automated cellular instance segmentation is a process that has been utilized for accelerating biolog...
A lot of imaging data is generated in medical, and particularly in the microscopy field. Researchers ...
Image object segmentation allows localising the region of interest in the image (ROI) and separating...
This work introduces methods for single-cell segmentation of microscopy images. The developed method...
Volumetric cell segmentation in fluorescence microscopy images is important to study a wide variety ...
Cell segmentation is a critical step for quantitative single-cell analysis in microscopy images. Exi...
Segmenting subcellular structures in living cells from fluorescence microscope images is a ground tr...
Accurate segmentation of electron microscopy (EM) volumes of the brain is essential to characterize ...
The identification of cell borders ('segmentation') in microscopy images constitutes a bottleneck fo...
Motivation: Single-cell time-lapse microscopy is a ubiquitous tool for studying the dynamics of comp...
The quantitative analysis of cellular membranes helps understanding developmental processes at the c...
International audienceAccurately detecting subcellular particles in fluorescence microscopy is of pr...
Living cell segmentation from bright-field light microscopy images is challenging due to the image c...
Detection and segmentation of macrophage cells in fluorescence microscopy images is a challenging pr...
Automatic cell segmentation in microscopy images works well with the support of deep neural networks...
Automated cellular instance segmentation is a process that has been utilized for accelerating biolog...
A lot of imaging data is generated in medical, and particularly in the microscopy field. Researchers ...
Image object segmentation allows localising the region of interest in the image (ROI) and separating...
This work introduces methods for single-cell segmentation of microscopy images. The developed method...
Volumetric cell segmentation in fluorescence microscopy images is important to study a wide variety ...
Cell segmentation is a critical step for quantitative single-cell analysis in microscopy images. Exi...
Segmenting subcellular structures in living cells from fluorescence microscope images is a ground tr...
Accurate segmentation of electron microscopy (EM) volumes of the brain is essential to characterize ...
The identification of cell borders ('segmentation') in microscopy images constitutes a bottleneck fo...
Motivation: Single-cell time-lapse microscopy is a ubiquitous tool for studying the dynamics of comp...
The quantitative analysis of cellular membranes helps understanding developmental processes at the c...
International audienceAccurately detecting subcellular particles in fluorescence microscopy is of pr...
Living cell segmentation from bright-field light microscopy images is challenging due to the image c...
Detection and segmentation of macrophage cells in fluorescence microscopy images is a challenging pr...