International audienceWe study the problem of classifying actions of human subjects using depth movies generated by Kinect or other depth sensors. Representing human body as dynamical skeletons, we study the evolution of their (skeletons’) shapes as trajectories on Kendall’s shape manifold. The action data is typically corrupted by large variability in execution rates within and across subjects and, thus, causing major problems in statistical analyses. To address that issue, we adopt a recently-developed framework of Su et al. to this problem domain. Here, the variable execution rates correspond to re-parameterizations of trajectories, and one uses a parameterization-invariant metric for aligning, comparing, averaging, and modeling trajecto...
We propose a system that can recognize daily human activities with a Kinect-style depth camera. Our ...
Recently, a video representation based on dense trajec-tories has been shown to outperform other hum...
In this paper, we propose an approach for human activity recognition using gradient orientation of d...
International audienceWe study the problem of classifying actions of human subjects using depth movi...
Human action recognition based on 3D skeleton has become an active research field in recent years wi...
International audienceIn this paper we focus on problems that deal with comparison of shapes of traj...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
Abstract: Since depth measuring devices for real-world scenarios became available in the recent past...
International audienceRecognizing human actions in 3D video sequences is an important open problem t...
Human action recognition from videos is a challenging machine vision task with multiple important ap...
Abstract. In this paper, a real-time tracking-based approach to human action recognition is proposed...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
Abstract Human action analysis based on 3D imaging is an emerging topic. This paper presents an appr...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
Devising a representation suitable for characterizing human actions on the basis of a sequence of po...
We propose a system that can recognize daily human activities with a Kinect-style depth camera. Our ...
Recently, a video representation based on dense trajec-tories has been shown to outperform other hum...
In this paper, we propose an approach for human activity recognition using gradient orientation of d...
International audienceWe study the problem of classifying actions of human subjects using depth movi...
Human action recognition based on 3D skeleton has become an active research field in recent years wi...
International audienceIn this paper we focus on problems that deal with comparison of shapes of traj...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
Abstract: Since depth measuring devices for real-world scenarios became available in the recent past...
International audienceRecognizing human actions in 3D video sequences is an important open problem t...
Human action recognition from videos is a challenging machine vision task with multiple important ap...
Abstract. In this paper, a real-time tracking-based approach to human action recognition is proposed...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
Abstract Human action analysis based on 3D imaging is an emerging topic. This paper presents an appr...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
Devising a representation suitable for characterizing human actions on the basis of a sequence of po...
We propose a system that can recognize daily human activities with a Kinect-style depth camera. Our ...
Recently, a video representation based on dense trajec-tories has been shown to outperform other hum...
In this paper, we propose an approach for human activity recognition using gradient orientation of d...