International audienceRecovering the pose of a person from single images is a challenging problem. This paper discusses a bottom-up approach that uses local image features to estimate human upper body pose from single images in cluttered backgrounds. The method takes the image window with a dense grid of local gradient orientation histograms, followed by non negative matrix factorization to learn a set of bases that correspond to local features on the human body, enabling selective encoding of human-like features in the presence of background clutter. Pose is then recovered by direct regression. This approach allows us to key on gradient patterns such as shoulder contours and bent elbows that are characteristic of humans and carry important...
We present a technique for estimating the spatial layout of humans in still images—the position of t...
Abstract. In this work, we address the problem of human pose esti-mation in still images by proposin...
This paper presents a robust and fully-automatic human motion tracking system without motion priors ...
International audienceRecovering the pose of a person from single images is a challenging problem. T...
In this study we present a biologically motivated learning-based computer vision approach to human p...
Abstract. We address the problem of estimating human body pose from a sin-gle image with cluttered b...
International audienceWe will describe our ongoing work on learning-based methods for recovering 3D ...
This paper introduces a new architecture for human pose estimation using a multi- layer convolutiona...
We describe a learning based method for recovering 3D human body pose from single images and monocul...
Automatic human pose estimation is one of the major topics in computer vision. This is a challenging...
(Invited Paper- CVPR 2011 special issue) Abstract—We describe two new approaches to human pose estim...
Human pose estimation is a challenging problem in computer vision and shares all the difficulties of...
This paper addresses the problem of accurate and robust tracking of 3D human body pose from depth im...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
This thesis describes a bottom-up approach to estimating human pose over time based on monocular vie...
We present a technique for estimating the spatial layout of humans in still images—the position of t...
Abstract. In this work, we address the problem of human pose esti-mation in still images by proposin...
This paper presents a robust and fully-automatic human motion tracking system without motion priors ...
International audienceRecovering the pose of a person from single images is a challenging problem. T...
In this study we present a biologically motivated learning-based computer vision approach to human p...
Abstract. We address the problem of estimating human body pose from a sin-gle image with cluttered b...
International audienceWe will describe our ongoing work on learning-based methods for recovering 3D ...
This paper introduces a new architecture for human pose estimation using a multi- layer convolutiona...
We describe a learning based method for recovering 3D human body pose from single images and monocul...
Automatic human pose estimation is one of the major topics in computer vision. This is a challenging...
(Invited Paper- CVPR 2011 special issue) Abstract—We describe two new approaches to human pose estim...
Human pose estimation is a challenging problem in computer vision and shares all the difficulties of...
This paper addresses the problem of accurate and robust tracking of 3D human body pose from depth im...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
This thesis describes a bottom-up approach to estimating human pose over time based on monocular vie...
We present a technique for estimating the spatial layout of humans in still images—the position of t...
Abstract. In this work, we address the problem of human pose esti-mation in still images by proposin...
This paper presents a robust and fully-automatic human motion tracking system without motion priors ...