International audienceWe study the problem of reconstructing the template-aligned mesh for human body estimation from unstructured point cloud data. Recently proposed approaches for shape matching that rely on Deep Neural Networks (DNNs) achieve state-of-the-art results with generic point-wise architectures; but in doing so, they exploit much weaker human body shape and surface priors with respect to methods that explicitly model the body surface with 3D templates. We investigate the impact of adding back such stronger shape priors by proposing a novel dedicated human template matching process, which relies on a point-based, deep autoencoder architecture. We encode surface smoothness and shape coherence with a specialized Gaussian Process l...
We present MeshLeTemp, a powerful method for 3D human pose and mesh reconstruction from a single ima...
Human pose estimation has an important impact on a wide range of applications, from human-computer i...
We develop a novel method for fitting high-resolution template meshes to detailed human body range s...
With the development of 3D vision techniques, in particular neural network based methods, the 3D neu...
The prior knowledge of real human body shapes and poses is fundamentalin computer games and animatio...
3D face reconstruction from a single 2D image is a fundamental Computer Vision problem of extraordin...
Deformable models are powerful tools for modelling the 3D shape variations for a class of objects. H...
The past decade we have seen remarkable progress in Computer Vision, fueled by the recent advances i...
We propose a novel end-to-end deep learning framework, capable of 3D human shape reconstruction from...
International audienceIn this paper, we address the problem of capturing both the shape and the pose...
We propose a novel optimization-based paradigm for 3D human model fitting on images and scans. In co...
Statistical models of 3D human shape and pose learned from scan databases have developed into valuab...
High-fidelity human 3D models can now be learned directly from videos, typically by combining a temp...
Reconstructing accurate 3D shapes of human faces from a single 2D image is a highly challenging Comp...
We present MeshLeTemp, a powerful method for 3D human pose and mesh reconstruction from a single ima...
Human pose estimation has an important impact on a wide range of applications, from human-computer i...
We develop a novel method for fitting high-resolution template meshes to detailed human body range s...
With the development of 3D vision techniques, in particular neural network based methods, the 3D neu...
The prior knowledge of real human body shapes and poses is fundamentalin computer games and animatio...
3D face reconstruction from a single 2D image is a fundamental Computer Vision problem of extraordin...
Deformable models are powerful tools for modelling the 3D shape variations for a class of objects. H...
The past decade we have seen remarkable progress in Computer Vision, fueled by the recent advances i...
We propose a novel end-to-end deep learning framework, capable of 3D human shape reconstruction from...
International audienceIn this paper, we address the problem of capturing both the shape and the pose...
We propose a novel optimization-based paradigm for 3D human model fitting on images and scans. In co...
Statistical models of 3D human shape and pose learned from scan databases have developed into valuab...
High-fidelity human 3D models can now be learned directly from videos, typically by combining a temp...
Reconstructing accurate 3D shapes of human faces from a single 2D image is a highly challenging Comp...
We present MeshLeTemp, a powerful method for 3D human pose and mesh reconstruction from a single ima...
Human pose estimation has an important impact on a wide range of applications, from human-computer i...
We develop a novel method for fitting high-resolution template meshes to detailed human body range s...