We introduce a novel computational framework for digital geometry processing, based upon the derivation of a nonlinear operator associated to the total variation functional. Such an operator admits a generalized notion of spectral decomposition, yielding a convenient multiscale representation akin to Laplacian-based methods, while at the same time avoiding undesirable over-smoothing effects typical of such techniques. Our approach entails accurate, detail-preserving decomposition and manipulation of 3D shape geometry while taking an especially intuitive form: non-local semantic details are well separated into different bands, which can then be filtered and re-synthesized with a straightforward linear step. Our computational framework is fle...
In this thesis we extend signal processing techniques originally formulated in the context of image ...
This talk will be part-tutorial and part-research presentation. I will begin by summarizing some ap...
International audienceWe propose a novel approach for the approximation and transfer of signals acro...
Mesh design is a major bottleneck in the creation of computer games and animation. Therefore simplif...
In this paper we demonstrate that the framework of nonlinear spectral decompositions based on total ...
Learning on surfaces is a difficult task: the data being non-Euclidean makes the transfer of known t...
Spectral decomposition of mesh geometry has been introduced by Taubin for geometry processing purpos...
The great challenge in computer graphics and geometric-aided design is to devise computationally eff...
We introduce a novel learning-based method to recover shapes from their Laplacian spectra, based on ...
We generalize basic signal processing tools such as downsampling, upsampling, and filters to irr...
Shape from texture has received much attention in the past few decades, We propose a computationally...
ACM SIGGRAPH ASIA Course NotesSpectral mesh processing is an idea that was proposed at the be- ginni...
In this paper, we introduce a new multiscale repreentation of surfaces using tight wavelet frames. B...
We introduce the first learning-based method for recovering shapes from Laplacian spectra. Given an ...
In this paper, we introduce a new multiscale representation of surfaces using tight wavelet frames. ...
In this thesis we extend signal processing techniques originally formulated in the context of image ...
This talk will be part-tutorial and part-research presentation. I will begin by summarizing some ap...
International audienceWe propose a novel approach for the approximation and transfer of signals acro...
Mesh design is a major bottleneck in the creation of computer games and animation. Therefore simplif...
In this paper we demonstrate that the framework of nonlinear spectral decompositions based on total ...
Learning on surfaces is a difficult task: the data being non-Euclidean makes the transfer of known t...
Spectral decomposition of mesh geometry has been introduced by Taubin for geometry processing purpos...
The great challenge in computer graphics and geometric-aided design is to devise computationally eff...
We introduce a novel learning-based method to recover shapes from their Laplacian spectra, based on ...
We generalize basic signal processing tools such as downsampling, upsampling, and filters to irr...
Shape from texture has received much attention in the past few decades, We propose a computationally...
ACM SIGGRAPH ASIA Course NotesSpectral mesh processing is an idea that was proposed at the be- ginni...
In this paper, we introduce a new multiscale repreentation of surfaces using tight wavelet frames. B...
We introduce the first learning-based method for recovering shapes from Laplacian spectra. Given an ...
In this paper, we introduce a new multiscale representation of surfaces using tight wavelet frames. ...
In this thesis we extend signal processing techniques originally formulated in the context of image ...
This talk will be part-tutorial and part-research presentation. I will begin by summarizing some ap...
International audienceWe propose a novel approach for the approximation and transfer of signals acro...