Deep learning-based approaches to delineating 3D structure depend on accurate annotations to train the networks. Yet, in practice, people, no matter how conscientious, have trouble precisely delineating in 3D and on a large scale, in part because the data is often hard to interpret visually and in part because the 3D interfaces are awkward to use. In this paper, we introduce a method that explicitly accounts for annotation inaccuracies. To this end, we treat the annotations as active contour models that can deform themselves while preserving their topology. This enables us to jointly train the network and correct potential errors in the original annotations. The result is an approach that boosts performance of deep networks trained with pot...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Stereo reconstruction is a problem of recovering a 3d structure of a scene from a pair of images of ...
We propose a loss function for training a Deep Neural Network (DNN) to segment volumetric data, that...
Many biological and medical tasks require the delineation of 3D curvilinear structures such as blood...
Training 3D object detectors on publicly available data has been limited to small datasets due to t...
Depth perception is paramount for many computer vision applications such as autonomous driving and ...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
Detection of curvilinear structures has long been of interest due to its wide range of applications....
Using multiple human annotators and ensembles of trained networks can improve the performance of dee...
Deep learning methods have received lots of attention in research on 3D object recognition. Due to ...
Deep learning has thoroughly changed the field of image analysis yielding impressive results wheneve...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
th the rise of deep neural networks a number of approaches for learning over 3D data have gained pop...
Deep learning has achieved tremendous progress and success in processing images and natural language...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Stereo reconstruction is a problem of recovering a 3d structure of a scene from a pair of images of ...
We propose a loss function for training a Deep Neural Network (DNN) to segment volumetric data, that...
Many biological and medical tasks require the delineation of 3D curvilinear structures such as blood...
Training 3D object detectors on publicly available data has been limited to small datasets due to t...
Depth perception is paramount for many computer vision applications such as autonomous driving and ...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
Detection of curvilinear structures has long been of interest due to its wide range of applications....
Using multiple human annotators and ensembles of trained networks can improve the performance of dee...
Deep learning methods have received lots of attention in research on 3D object recognition. Due to ...
Deep learning has thoroughly changed the field of image analysis yielding impressive results wheneve...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
th the rise of deep neural networks a number of approaches for learning over 3D data have gained pop...
Deep learning has achieved tremendous progress and success in processing images and natural language...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...
Persistent Homology (PH) has been successfully used to train networks to detect curvilinear structur...
Stereo reconstruction is a problem of recovering a 3d structure of a scene from a pair of images of ...