Besides per-pixel accuracy, topological correctness is also crucial for the segmentation of images with fine-scale structures, e.g., satellite images and biomedical images. In this paper, by leveraging the theory of digital topology, we identify locations in an image that are critical for topology. By focusing on these critical locations, we propose a new homotopy warping loss to train deep image segmentation networks for better topological accuracy. To efficiently identity these topologically critical locations, we propose a new algorithm exploiting the distance transform. The proposed algorithm, as well as the loss function, naturally generalize to different topological structures in both 2D and 3D settings. The proposed loss function hel...
A fundamental problem in computer vision is boundary estimation, where the goal is to delineate the ...
Abstract. We present here a new method for correcting the topology of objects segmented from medical...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
Curvilinear structure segmentation plays an important role in many applications. The standard formul...
Capturing the global topology of an image is essential for proposing an accurate segmentation of its...
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...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Accurate segmentation of tubular, network-like structures, such as vessels, neurons, or roads, is re...
Image segmentation is a largely researched field where neural networks find vast applications in man...
Accurate topology is key when performing meaningful anatomical segmentations, however, it is often o...
Accurate delineation of fine-scale structures is a very important yet challenging problem. Existing ...
This paper proposes a novel topological learning framework that integrates networks of different siz...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Topological concepts are critically important in the computation of anatomical representations, esta...
A fundamental problem in computer vision is boundary estimation, where the goal is to delineate the ...
Abstract. We present here a new method for correcting the topology of objects segmented from medical...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
Curvilinear structure segmentation plays an important role in many applications. The standard formul...
Capturing the global topology of an image is essential for proposing an accurate segmentation of its...
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...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Accurate segmentation of tubular, network-like structures, such as vessels, neurons, or roads, is re...
Image segmentation is a largely researched field where neural networks find vast applications in man...
Accurate topology is key when performing meaningful anatomical segmentations, however, it is often o...
Accurate delineation of fine-scale structures is a very important yet challenging problem. Existing ...
This paper proposes a novel topological learning framework that integrates networks of different siz...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Topological concepts are critically important in the computation of anatomical representations, esta...
A fundamental problem in computer vision is boundary estimation, where the goal is to delineate the ...
Abstract. We present here a new method for correcting the topology of objects segmented from medical...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...