Abstract: Since depth measuring devices for real-world scenarios became available in the recent past, the use of 3d data now comes more in focus of human action recognition. We propose a scheme for representing human actions in 3d, which is designed to be invariant with respect to the actor’s scale, rotation, and translation. Our approach employs Principal Component Analysis (PCA) as an exemplary technique from the domain of manifold learning. To distinguish actions regarding their execution speed, we include temporal information into our modeling scheme. Experiments performed on the CMU Motion Capture dataset shows promising recognition rates as well as its robustness with respect to noise and incorrect detection of landmarks.
Human action recognition is used to automatically detect and recognize actions per- formed by humans...
Existing techniques for 3D action recognition are sensitive to viewpoint variations because they ext...
One of the fundamental challenges of recognizing actions is accounting for the variability that aris...
Abstract—Since depth measuring devices for real-world scenarios became available in the recent past,...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
International audienceWe study the problem of classifying actions of human subjects using depth movi...
In this paper, the problem of human action recognition using 3D reconstruction data is deeply invest...
International audienceRecognizing human actions in 3D video sequences is an important open problem t...
In this paper a novel algorithm for human action recognition is presented. This approach is based on...
In this paper, global-level view-invariant descriptors for human action recognition using 3D reconst...
Understanding and interpreting dynamic human actions is an important area of research in the field o...
We propose the use of 3D (2D+time) Shape Context to recognize the spatial and temporal details inher...
How to recognize human action from videos captured by modern cameras efficiently and effectively is ...
Existing techniques for 3D action recognition are sensitive to viewpoint variations because they ext...
Human action recognition is used to automatically detect and recognize actions per- formed by humans...
Existing techniques for 3D action recognition are sensitive to viewpoint variations because they ext...
One of the fundamental challenges of recognizing actions is accounting for the variability that aris...
Abstract—Since depth measuring devices for real-world scenarios became available in the recent past,...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
International audienceWe study the problem of classifying actions of human subjects using depth movi...
In this paper, the problem of human action recognition using 3D reconstruction data is deeply invest...
International audienceRecognizing human actions in 3D video sequences is an important open problem t...
In this paper a novel algorithm for human action recognition is presented. This approach is based on...
In this paper, global-level view-invariant descriptors for human action recognition using 3D reconst...
Understanding and interpreting dynamic human actions is an important area of research in the field o...
We propose the use of 3D (2D+time) Shape Context to recognize the spatial and temporal details inher...
How to recognize human action from videos captured by modern cameras efficiently and effectively is ...
Existing techniques for 3D action recognition are sensitive to viewpoint variations because they ext...
Human action recognition is used to automatically detect and recognize actions per- formed by humans...
Existing techniques for 3D action recognition are sensitive to viewpoint variations because they ext...
One of the fundamental challenges of recognizing actions is accounting for the variability that aris...