International audienceDue to the remarkable progress of deep generative models, animating images has become increasingly efficient, whereas associated results have become increasingly realistic. Current animation-approaches commonly exploit structure representation extracted from driving videos. Such structure representation is instrumental in transferring motion from driving videos to still images. However, such approaches fail in case the source image and driving video encompass large appearance variation. Moreover, the extraction of structure information requires additional modules that endow the animation-model with increased complexity. Deviating from such models, we here introduce the Latent Image Animator (LIA), a self-supervised aut...
This work addresses the problem of discovering, in an unsupervised manner, interpretable paths in th...
Animation has evolved over the years – from the early days of 2D animation to the present technology...
We present the initial design of a motion reconstruction framework for character animation which enc...
Masked autoencoders (MAEs) have emerged recently as art self-supervised spatiotemporal representatio...
The aim of this doctoral thesis is to present a body of work aimed at reducing the time spent by an...
This doctoral dissertation aims to show a body of work proposed for improving different blocks in th...
International audienceWe propose a framework to learn a structured latent space to represent 4D huma...
We propose a framework to learn a structured latent space to represent 4D human body motion, where e...
We introduce a method which allows users to creatively explore and navigate the vast latent spaces o...
We propose a method for generating (near) video-realistic animations of real humans under user contr...
Generative Adversarial Networks (GANs) have witnessed increasing attention due to their abilities to...
Generative Adversarial Networks (GANs) have witnessed increasing attention due to their abilities to...
This report details the implementation of an autoencoder trained with a learned similarity metric - ...
Neural networks have become powerful machinery for identifying patterns from raw input data from lar...
International audienceWe present a method for animating 3D models of animals from existing live vide...
This work addresses the problem of discovering, in an unsupervised manner, interpretable paths in th...
Animation has evolved over the years – from the early days of 2D animation to the present technology...
We present the initial design of a motion reconstruction framework for character animation which enc...
Masked autoencoders (MAEs) have emerged recently as art self-supervised spatiotemporal representatio...
The aim of this doctoral thesis is to present a body of work aimed at reducing the time spent by an...
This doctoral dissertation aims to show a body of work proposed for improving different blocks in th...
International audienceWe propose a framework to learn a structured latent space to represent 4D huma...
We propose a framework to learn a structured latent space to represent 4D human body motion, where e...
We introduce a method which allows users to creatively explore and navigate the vast latent spaces o...
We propose a method for generating (near) video-realistic animations of real humans under user contr...
Generative Adversarial Networks (GANs) have witnessed increasing attention due to their abilities to...
Generative Adversarial Networks (GANs) have witnessed increasing attention due to their abilities to...
This report details the implementation of an autoencoder trained with a learned similarity metric - ...
Neural networks have become powerful machinery for identifying patterns from raw input data from lar...
International audienceWe present a method for animating 3D models of animals from existing live vide...
This work addresses the problem of discovering, in an unsupervised manner, interpretable paths in th...
Animation has evolved over the years – from the early days of 2D animation to the present technology...
We present the initial design of a motion reconstruction framework for character animation which enc...