While deep learning has been successfully applied to many tasks in computer graphics and vision, standard learning architectures often operate on shape representations that are dense and regular, like pixel or voxel grids. On the other hand, decades of computer graphics and geometry processing research have resulted in specialized algorithms and tools that use representations without such regular structure. In this thesis, we revisit conventional approaches in graphics in geometry to propose deep learning pipelines and inductive biases that are directly compatible with common geometry representations, without relying on simple uniform structure.Ph.D
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
Researchers have achieved great success in dealing with 2D images using deep learning. In recent yea...
Geometry processing is an established field in computer graphics, covering a variety of topics that ...
A fine-grained understanding of an image is two-fold: visual understanding and semantic understandin...
The past decade in computer vision research has witnessed the re-emergence of deep learning, and in ...
The goal of these course notes is to describe the main mathematical ideas behind geometric deep lear...
Deep learning methods have achieved great success in analyzing traditional data such as texts, sound...
3D data contain rich information about the full geometry of objects or scenes. Learning tasks on the...
Deep learning has become popular and the mainstream in types of researches related to learning,and h...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
This thesis proposes an introduction to the fundamental concepts of supervised deep learning. Starti...
Deep learning has achieved tremendous progress and success in processing images and natural language...
Deep learning has achieved a remarkable performance breakthrough in several fields, most notably in ...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
Researchers have achieved great success in dealing with 2D images using deep learning. In recent yea...
Geometry processing is an established field in computer graphics, covering a variety of topics that ...
A fine-grained understanding of an image is two-fold: visual understanding and semantic understandin...
The past decade in computer vision research has witnessed the re-emergence of deep learning, and in ...
The goal of these course notes is to describe the main mathematical ideas behind geometric deep lear...
Deep learning methods have achieved great success in analyzing traditional data such as texts, sound...
3D data contain rich information about the full geometry of objects or scenes. Learning tasks on the...
Deep learning has become popular and the mainstream in types of researches related to learning,and h...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
This thesis proposes an introduction to the fundamental concepts of supervised deep learning. Starti...
Deep learning has achieved tremendous progress and success in processing images and natural language...
Deep learning has achieved a remarkable performance breakthrough in several fields, most notably in ...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...