Generative models that produce point clouds have emerged as a powerful tool to represent 3D surfaces, and the best current ones rely on learning an ensemble of parametric representations. Unfortunately, they offer no control over the deformations of the surface patches that form the ensemble and thus fail to prevent them from either overlapping or collapsing into single points or lines. As a consequence, computing shape properties such as surface normals and curvatures becomes difficult and unreliable. In this paper, we show that we can exploit the inherent differentiability of deep networks to leverage differential surface properties during training so as to prevent patch collapse and strongly reduce patch overlap. Furthermore, this lets u...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
International audienceIn this paper, we propose PCPNET, a deep-learning based approach for estimatin...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
This thesis explores the challenge of teaching a machine how to perceive shape from surface contour ...
We survey and benchmark traditional and novel learning-based algorithms that address the problem of ...
Recent years have seen the development of mature solutions for reconstructing deformable surfaces fr...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
International audienceNeural implicit surfaces have become an important technique for multi-view 3D ...
In this paper, we propose a novel method, namely GR-PSN, which learns surface normals from photometr...
Implicit shape representations, such as Level Sets, provide a very elegant formulation for performin...
13 pagesMost current neural networks for reconstructing surfaces from point clouds ignore sensor pos...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
Recently, neural implicit surfaces learning by volume rendering has become popular for multi-view re...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
International audienceIn this paper, we propose PCPNET, a deep-learning based approach for estimatin...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
This thesis explores the challenge of teaching a machine how to perceive shape from surface contour ...
We survey and benchmark traditional and novel learning-based algorithms that address the problem of ...
Recent years have seen the development of mature solutions for reconstructing deformable surfaces fr...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
International audienceNeural implicit surfaces have become an important technique for multi-view 3D ...
In this paper, we propose a novel method, namely GR-PSN, which learns surface normals from photometr...
Implicit shape representations, such as Level Sets, provide a very elegant formulation for performin...
13 pagesMost current neural networks for reconstructing surfaces from point clouds ignore sensor pos...
In this thesis, we advocate that Computer-Aided Engineering could benefit from a Geometric Deep Lear...
Recently, neural implicit surfaces learning by volume rendering has become popular for multi-view re...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
We present a method for the adaptive reconstruction of a surface directly from an unorganized point ...
International audienceIn this paper, we propose PCPNET, a deep-learning based approach for estimatin...