Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning algorithms. To support this spatial reasoning task, contextual information about the overall shape of an object is critical. However, such information is not captured by established loss terms (e.g. Dice loss). We propose to complement geometrical shape information by including multi-scale topological features, such as connected components, cycles, and voids, in the reconstruction loss. Our method uses cubical complexes to calculate topological features of 3D volume data and employs an optimal transport distance to guide the reconstruction process. This topology-aware loss is fully differentiable, computationally efficient, and can be added to a...
We present ANISE, a method that reconstructs a 3D shape from partial observations (images or sparse ...
Point networks have recently enjoyed a lot of success due to the significant growth in 3D data and t...
Motivated by the challenging segmentation task of pancreatic tubular networks, this paper tackles tw...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
With the advancement and prevalence of various sensors over the past years, it is increasingly easy ...
International audienceDeep learning methods have achieved impressive results for 3D medical image se...
Many biological and medical tasks require the delineation of 3D curvilinear structures such as blood...
Using neural networks to represent 3D objects has become popular. However, many previous works emplo...
Accurate segmentation of tubular, network-like structures, such as vessels, neurons, or roads, is re...
Segmentation networks are not explicitly imposed to learn global invariants of an image, such as the...
Generative models for 3D geometric data arise in many important applications in 3D computer vision a...
Besides per-pixel accuracy, topological correctness is also crucial for the segmentation of images w...
3D textured shape recovery from partial scans is crucial for many real-world applications. Existing ...
Recent advances in medical Deep Learning (DL) have enabled the significant reduction in time require...
This paper presents a novel, powerful reconstruction algorithm that can recover correct shape geomet...
We present ANISE, a method that reconstructs a 3D shape from partial observations (images or sparse ...
Point networks have recently enjoyed a lot of success due to the significant growth in 3D data and t...
Motivated by the challenging segmentation task of pancreatic tubular networks, this paper tackles tw...
Reconstructing 3D objects from 2D images is both challenging for our brains and machine learning alg...
With the advancement and prevalence of various sensors over the past years, it is increasingly easy ...
International audienceDeep learning methods have achieved impressive results for 3D medical image se...
Many biological and medical tasks require the delineation of 3D curvilinear structures such as blood...
Using neural networks to represent 3D objects has become popular. However, many previous works emplo...
Accurate segmentation of tubular, network-like structures, such as vessels, neurons, or roads, is re...
Segmentation networks are not explicitly imposed to learn global invariants of an image, such as the...
Generative models for 3D geometric data arise in many important applications in 3D computer vision a...
Besides per-pixel accuracy, topological correctness is also crucial for the segmentation of images w...
3D textured shape recovery from partial scans is crucial for many real-world applications. Existing ...
Recent advances in medical Deep Learning (DL) have enabled the significant reduction in time require...
This paper presents a novel, powerful reconstruction algorithm that can recover correct shape geomet...
We present ANISE, a method that reconstructs a 3D shape from partial observations (images or sparse ...
Point networks have recently enjoyed a lot of success due to the significant growth in 3D data and t...
Motivated by the challenging segmentation task of pancreatic tubular networks, this paper tackles tw...