Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2007.Includes bibliographical references (p. 51-58).We present a biologically-motivated system for the recognition of actions from video sequences. The approach builds on recent work on object recognition based on hierarchical feedforward architectures and extends a neurobiological model of motion processing in the visual cortex. The system consists of a hierarchy of spatio-temporal feature detectors of increasing complexity: an input sequence is first analyzed by an array of motion-direction sensitive units which, through a hierarchy of processing stages, lead to position-invariant spatio-temporal feature detectors. We experiment wit...
We present a method that extracts effective features in videos for human action recognition. The pro...
We present a method that extracts effective features in videos for human action recognition. The pro...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
International audienceMotion is a key feature for a wide class of computer vision approaches to reco...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
This paper proposes a shape-based neurobiological approach for action recognition. Our work is motiv...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In this project, our work can be divided into two parts: RGB-D based action recognition in trimmed v...
The ability to recognize the actions of others from visual input is essential to humans' daily lives...
We present a method that extracts effective features in videos for human action recognition. The pro...
We present a method that extracts effective features in videos for human action recognition. The pro...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
International audienceMotion is a key feature for a wide class of computer vision approaches to reco...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
International audienceHere we show that reproducing the functional properties of MT cells with vario...
This paper proposes a shape-based neurobiological approach for action recognition. Our work is motiv...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In this project, our work can be divided into two parts: RGB-D based action recognition in trimmed v...
The ability to recognize the actions of others from visual input is essential to humans' daily lives...
We present a method that extracts effective features in videos for human action recognition. The pro...
We present a method that extracts effective features in videos for human action recognition. The pro...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...