We present a compact representation for human action recognition in videos using line and optical flow histograms. We introduce a new shape descriptor based on the distribution of lines which are fitted to boundaries of human figures. By using an entropy-based approach, we apply feature selection to densify our feature representation, thus, minimizing classification time without degrading accuracy. We also use a compact representation of optical flow for motion information. Using line and flow histograms together with global velocity information, we show that high-accuracy action recognition is possible, even in challenging recording conditions. © 2008 IEEE
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
Human action recognition from videos has wide applicability and receives significant interests. In t...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
We present a compact representation for human action recognition in videos using line and optical fl...
We present a compact representation for human action recognition in videos using line and optical fl...
The problem of human action recognition is solved as a machine learning problem. The research work s...
Cataloged from PDF version of article.Most of the approaches to human action recognition tend to for...
In this paper, we utilize a line based pose representation to recognize human actions in videos. We ...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
In this project, we develop an algorithm that recognize different human actions from videos. We tac...
In this paper we develop a new method for recognizing human actions from depth data. 2D optical flow...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
We describe a "bag-of-rectangles" method for representing and recognizing human actions in videos. I...
How to automatically label videos containing human motions is the task of human action recognition. ...
This paper introduces a video representation based on dense trajectories and motion boundary descrip...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
Human action recognition from videos has wide applicability and receives significant interests. In t...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
We present a compact representation for human action recognition in videos using line and optical fl...
We present a compact representation for human action recognition in videos using line and optical fl...
The problem of human action recognition is solved as a machine learning problem. The research work s...
Cataloged from PDF version of article.Most of the approaches to human action recognition tend to for...
In this paper, we utilize a line based pose representation to recognize human actions in videos. We ...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
In this project, we develop an algorithm that recognize different human actions from videos. We tac...
In this paper we develop a new method for recognizing human actions from depth data. 2D optical flow...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
We describe a "bag-of-rectangles" method for representing and recognizing human actions in videos. I...
How to automatically label videos containing human motions is the task of human action recognition. ...
This paper introduces a video representation based on dense trajectories and motion boundary descrip...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
Human action recognition from videos has wide applicability and receives significant interests. In t...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...