We introduce HuMoR: a 3D Human Motion Model for Robust Estimation of temporal pose and shape. Though substantial progress has been made in estimating 3D human motion and shape from dynamic observations, recovering plausible pose sequences in the presence of noise and occlusions remains a challenge. For this purpose, we propose an expressive generative model in the form of a conditional variational autoencoder, which learns a distribution of the change in pose at each step of a motion sequence. Furthermore, we introduce a flexible optimization-based approach that leverages HuMoR as a motion prior to robustly estimate plausible pose and shape from ambiguous observations. Through extensive evaluations, we demonstrate that our model generalizes...
International audienceWe address 3D human motion capture from monocular images, taking a learning ba...
We focus on the task of estimating a physically plausi-ble articulated human motion from monocular v...
We present a system for the estimation of unconstrained 3D human upper body movement from multiple c...
Pose and motion priors are crucial for recovering realistic and accurate human motion from noisy obs...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
We present a bundle-adjustment-based algorithm for recovering accurate 3D human pose and meshes from...
In this paper, we propose a pose grammar to tackle the problem of 3D human pose estimation. Our mode...
Existing markerless motion capture methods often assume known backgrounds, static cameras, and seque...
We introduce DiffPhy, a differentiable physics-based model for articulated 3d human motion reconstru...
Estimating 3D poses from a monocular video is still a challenging task, despite the significant prog...
We propose Adversarially Parameterized Optimization, a framework for learning low-dimensional feasib...
Jaeggli T., Koller-Meier E., Van Gool L., ''Learning generative models for multi-activity body pose ...
Abstract—In this paper we address the problem of marker-less human performance capture from multiple...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Human 3d pose estimation from monocular sequence is a challenging problem, owing to highly articulat...
International audienceWe address 3D human motion capture from monocular images, taking a learning ba...
We focus on the task of estimating a physically plausi-ble articulated human motion from monocular v...
We present a system for the estimation of unconstrained 3D human upper body movement from multiple c...
Pose and motion priors are crucial for recovering realistic and accurate human motion from noisy obs...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
We present a bundle-adjustment-based algorithm for recovering accurate 3D human pose and meshes from...
In this paper, we propose a pose grammar to tackle the problem of 3D human pose estimation. Our mode...
Existing markerless motion capture methods often assume known backgrounds, static cameras, and seque...
We introduce DiffPhy, a differentiable physics-based model for articulated 3d human motion reconstru...
Estimating 3D poses from a monocular video is still a challenging task, despite the significant prog...
We propose Adversarially Parameterized Optimization, a framework for learning low-dimensional feasib...
Jaeggli T., Koller-Meier E., Van Gool L., ''Learning generative models for multi-activity body pose ...
Abstract—In this paper we address the problem of marker-less human performance capture from multiple...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Human 3d pose estimation from monocular sequence is a challenging problem, owing to highly articulat...
International audienceWe address 3D human motion capture from monocular images, taking a learning ba...
We focus on the task of estimating a physically plausi-ble articulated human motion from monocular v...
We present a system for the estimation of unconstrained 3D human upper body movement from multiple c...