Many biological and medical tasks require the delineation of 3D curvilinear structures such as blood vessels and neurites from image volumes. This is typically done using neural networks trained by minimizing voxel-wise loss functions that do not capture the topological properties of these structures. As a result, the connectivity of the recovered structures is often wrong, which lessens their usefulness. In this paper, we propose to improve the 3D connectivity of our results by minimizing a sum of topology-aware losses on their 2D projections. This suffices to increase the accuracy and to reduce the annotation effort required to provide the required annotated training data. Code is available at https://github.com/doruk-oner/ConnectivityOnP...
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Deep learning-based approaches to delineating 3D structure depend on accurate annotations to train t...
Detection of curvilinear structures has long been of interest due to its wide range of applications....
International audienceDeep learning methods have achieved impressive results for 3D medical image se...
Segmentation networks are not explicitly imposed to learn global invariants of an image, such as the...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
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We propose a new approach to semi-automated delineation of curvilinear structures in a wide range of...
Recent advances over the past two decades in neuroimaging methods have enabled us to map the connect...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
Deep convolutional neural networks are powerful tools for learning visual representations from image...
We propose a loss function for training a Deep Neural Network (DNN) to segment volumetric data, that...
Deep learning-based approaches to delineating 3D structure depend on accurate annotations to train t...
Detection of curvilinear structures has long been of interest due to its wide range of applications....
International audienceDeep learning methods have achieved impressive results for 3D medical image se...
Segmentation networks are not explicitly imposed to learn global invariants of an image, such as the...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
Accurate segmentation of tubular, network-like structures, such as vessels, neurons, or roads, is re...
This paper presents a new spatial fully connected tubular network for 3D tubular-structure segmentat...
We propose a new framework to map structural connectomes using deep learning and diffusion MRI. We s...
International audienceWe present a new algorithm which merges discontinuities in 3-D images of tubul...
We propose a new approach to semi-automated delineation of curvilinear structures in a wide range of...
Recent advances over the past two decades in neuroimaging methods have enabled us to map the connect...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
Deep convolutional neural networks are powerful tools for learning visual representations from image...