International audienceA novel action recognition strategy in a video-surveillance context is herein presented. The method starts by computing a multiscale dense optical flow, from which spatial apparent movement regions are clustered as Regions of Interest (RoIs). Each ROI is summarized at each time by an orientation histogram. Then, a multilayer structure dynamically stores the orientation histograms associated to any of the found RoI in the scene and a set of cumulated temporal statistics is used to label that RoI using a previously trained support vector machine model. The method is evaluated using classic human action and public surveillance datasets, with two different tasks: (1) classification of short sequences containing individual ...
Human Action Recognition is a developing field in computer vision and machine learning. Our aim is t...
In this paper we propose a system for human action tracking and recognition using a robust particle ...
Abstract—This paper presents a novel approach for automatic recognition of human activities from vid...
International audienceThis work introduces a novel motion descriptor that enables human activity cla...
Human action recognition and video summarization represent challenging tasks for several computer vi...
Face recognition and video summarization represent chal- lenging tasks for several computer vision a...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
The goal of this paper is to build robust human action recognition for real world surveillance video...
The goal of this paper is to build robust human action recognition for real world surveillance video...
This paper addresses the problem of human action detection /recognition by investigating interest po...
One of the most exciting and useful computer vision research topics is automated human activity iden...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
International audienceBehavior recognition and prediction in public and private areas are still majo...
International audienceMost of recent methods for action/activity recognition, usually based on stati...
Human Action Recognition is a developing field in computer vision and machine learning. Our aim is t...
In this paper we propose a system for human action tracking and recognition using a robust particle ...
Abstract—This paper presents a novel approach for automatic recognition of human activities from vid...
International audienceThis work introduces a novel motion descriptor that enables human activity cla...
Human action recognition and video summarization represent challenging tasks for several computer vi...
Face recognition and video summarization represent chal- lenging tasks for several computer vision a...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
The goal of this paper is to build robust human action recognition for real world surveillance video...
The goal of this paper is to build robust human action recognition for real world surveillance video...
This paper addresses the problem of human action detection /recognition by investigating interest po...
One of the most exciting and useful computer vision research topics is automated human activity iden...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
International audienceBehavior recognition and prediction in public and private areas are still majo...
International audienceMost of recent methods for action/activity recognition, usually based on stati...
Human Action Recognition is a developing field in computer vision and machine learning. Our aim is t...
In this paper we propose a system for human action tracking and recognition using a robust particle ...
Abstract—This paper presents a novel approach for automatic recognition of human activities from vid...