We introduce NeuralMLS, a space-based deformation technique, guided by a set of displaced control points. We leverage the power of neural networks to inject the underlying shape geometry into the deformation parameters. The goal of our technique is to enable a realistic and intuitive shape deformation. Our method is built upon moving least-squares (MLS), since it minimizes a weighted sum of the given control point displacements. Traditionally, the influence of each control point on every point in space (i.e., the weighting function) is defined using inverse distance heuristics. In this work, we opt to learn the weighting function, by training a neural network on the control points from a single input shape, and exploit the innate smoothness...
Neural implicit fields have recently emerged as a useful representation for 3D shapes. These fields ...
We introduce a novel approach for rendering static and dynamic 3D neural signed distance functions (...
We present an efficient and effective deforma-tion algorithm for interactive shape manipula-tion. To...
We propose OptCtrlPoints, a data-driven framework designed to identify the optimal sparse set of con...
In recent years, there has been a surge in the availability of 3D sensors, leading to an exponential...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
NNWarp is a highly re-usable and efficient neural network (NN) based nonlinear deformable simulation...
We present a geometry processing framework that allows direct manipulation or preservation of positi...
We propose Point2Cyl, a supervised network transforming a raw 3D point cloud to a set of extrusion c...
Geometry processing is an established field in computer graphics, covering a variety of topics that ...
Efficient representation of articulated objects such as human bodies is an important problem in comp...
International audienceIn this work we present a novel approach for computing correspondences between...
We present NeuroMorph, a new neural network architecture that takes as input two 3D shapes and produ...
This work is concerned with a representation of shapes that disentangles fine, local and possibly re...
Neural implicit fields have recently emerged as a useful representation for 3D shapes. These fields ...
We introduce a novel approach for rendering static and dynamic 3D neural signed distance functions (...
We present an efficient and effective deforma-tion algorithm for interactive shape manipula-tion. To...
We propose OptCtrlPoints, a data-driven framework designed to identify the optimal sparse set of con...
In recent years, there has been a surge in the availability of 3D sensors, leading to an exponential...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
NNWarp is a highly re-usable and efficient neural network (NN) based nonlinear deformable simulation...
We present a geometry processing framework that allows direct manipulation or preservation of positi...
We propose Point2Cyl, a supervised network transforming a raw 3D point cloud to a set of extrusion c...
Geometry processing is an established field in computer graphics, covering a variety of topics that ...
Efficient representation of articulated objects such as human bodies is an important problem in comp...
International audienceIn this work we present a novel approach for computing correspondences between...
We present NeuroMorph, a new neural network architecture that takes as input two 3D shapes and produ...
This work is concerned with a representation of shapes that disentangles fine, local and possibly re...
Neural implicit fields have recently emerged as a useful representation for 3D shapes. These fields ...
We introduce a novel approach for rendering static and dynamic 3D neural signed distance functions (...
We present an efficient and effective deforma-tion algorithm for interactive shape manipula-tion. To...