Data used in image segmentation are not always defined on the same grid. This is particularly true for medical images, where the resolution, field-of-view and orientation can differ across channels and subjects. Images and labels are therefore commonly resampled onto the same grid, as a pre-processing step. However, the resampling operation introduces partial volume effects and blurring, thereby changing the effective resolution and reducing the contrast between structures. In this paper we propose a splat layer, which automatically handles resolution mismatches in the input data. This layer pushes each image onto a mean space where the forward pass is performed. As the splat operator is the adjoint to the resampling operator, the mean-spac...
Medical image segmentation aims to identify important or suspicious regions within medical images. H...
This repository contains a trained weight for SplineDist neural network with 6 control points. It ha...
Spiking Neural Networks (SNNs) can be configured to produce almost-equivalent accurate Analog Neural...
Data used in image segmentation are not always defined on the same grid. This is particularly true f...
There is a limitation in the size of an image that can be processed using computationally demanding ...
It is a common practice in multimodal medical imaging to undersample the anatomically-derived segmen...
International audienceObjectivesImage segmentation plays an important role in the analysis and under...
This repository contains trained weights for SplineDist neural network. At present it includes the w...
International audienceThe process of segmenting images is one of the most critical ones in automatic...
The purpose of deformable image registration is to recover acceptable spatial transformations that a...
Advances in imaging technology continue to outpace the innovations in computing hardware. For some t...
Graph-cuts based algorithms are effective for a variety of segmentation tasks in computer vision. On...
Imaging devices exploit the Nyquist-Shannon sampling the- orem to avoid both aliasing and redundant ...
Generalizability is seen as one of the major challenges in deep learning, in particular in the domai...
A) Data is organized for model training by annotating images, resizing images and corresponding anno...
Medical image segmentation aims to identify important or suspicious regions within medical images. H...
This repository contains a trained weight for SplineDist neural network with 6 control points. It ha...
Spiking Neural Networks (SNNs) can be configured to produce almost-equivalent accurate Analog Neural...
Data used in image segmentation are not always defined on the same grid. This is particularly true f...
There is a limitation in the size of an image that can be processed using computationally demanding ...
It is a common practice in multimodal medical imaging to undersample the anatomically-derived segmen...
International audienceObjectivesImage segmentation plays an important role in the analysis and under...
This repository contains trained weights for SplineDist neural network. At present it includes the w...
International audienceThe process of segmenting images is one of the most critical ones in automatic...
The purpose of deformable image registration is to recover acceptable spatial transformations that a...
Advances in imaging technology continue to outpace the innovations in computing hardware. For some t...
Graph-cuts based algorithms are effective for a variety of segmentation tasks in computer vision. On...
Imaging devices exploit the Nyquist-Shannon sampling the- orem to avoid both aliasing and redundant ...
Generalizability is seen as one of the major challenges in deep learning, in particular in the domai...
A) Data is organized for model training by annotating images, resizing images and corresponding anno...
Medical image segmentation aims to identify important or suspicious regions within medical images. H...
This repository contains a trained weight for SplineDist neural network with 6 control points. It ha...
Spiking Neural Networks (SNNs) can be configured to produce almost-equivalent accurate Analog Neural...