The goal of this paper is to build robust human action recognition for real world surveillance videos. Local spatio-temporal features around interest points provide compact but descriptive representations for video analysis and motion recognition. Current approaches tend to extend spatial descriptions by adding a temporal component for the appearance descriptor, which only implicitly captures motion information. We propose an algorithm called MoSIFT, which detects interest points and encodes not only their local appearance but also explicitly models local motion. The idea is to detect distinctive local features through local appearance and motion. We construct MoSIFT feature descriptors in the spirit of the well-known SIFT descriptors to be...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
How to recognize human action from videos captured by modern cameras efficiently and effectively is ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...
The goal of this paper is to build robust human action recognition for real world surveillance video...
The Informedia team participated in the tasks of high-level feature extraction and event detection i...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
In this paper we propose a system for human action tracking and recognition using a robust particle ...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
This paper presents a fast and simple method for human action recognition. The proposed technique re...
International audienceA novel action recognition strategy in a video-surveillance context is herein ...
The Informedia team participated in the tasks of high-level feature extraction and event detection i...
AbstractThis paper presents a fast and simple method for human action recognition. The proposed tech...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
How to recognize human action from videos captured by modern cameras efficiently and effectively is ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...
The goal of this paper is to build robust human action recognition for real world surveillance video...
The Informedia team participated in the tasks of high-level feature extraction and event detection i...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
In this paper we propose a system for human action tracking and recognition using a robust particle ...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
This paper presents a fast and simple method for human action recognition. The proposed technique re...
International audienceA novel action recognition strategy in a video-surveillance context is herein ...
The Informedia team participated in the tasks of high-level feature extraction and event detection i...
AbstractThis paper presents a fast and simple method for human action recognition. The proposed tech...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
How to recognize human action from videos captured by modern cameras efficiently and effectively is ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...