A new, combined human activity detection method is proposed. Our method is based on Efros et al.'s motion descriptors[2] and Ke et al.'s event detectors[3]. Since both methods use optical flow, it is easy to combine them. However, the computational cost of the training increases considerably because of the increased number of weak classifiers. We reduce this computational cost by extend Ke et al.'s weak classifiers to incorporate multi-dimensional features. The proposed method is applied to off-air tennis video data, and its performance is evaluated by comparison with the original two methods. Experimental results show that the performance of the proposed method is a good compromise in terms of detection rate and of computation time of test...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
The abrupt expansion of the Internet use over the last decade led to an uncontrollable amount of med...
AbstractWe propose robust multi-dimensional motion features for human activity recognition from firs...
A new, combined human activity detection method is proposed. Our method is based on Efros et al.’s m...
Abstract The automated analysis of activity in digital multimedia, and especially video, is gaining ...
We study the question of activity classification in videos and present a novel approach for recogniz...
The automated analysis of activity in digital multimedia, and especially video, is gaining more and ...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
Identifying human behaviors is a challenging research problem due to the complexity and variation of...
In this paper we address the problem of motion event detection in athlete recordings from individual...
International audienceThis work introduces a novel motion descriptor that enables human activity cla...
Abstract Human activity monitoring in the video sequences is an intriguing computer vision domain wh...
We propose robust multi-dimensional motion features for human activity recognition from first-person...
Despite the vast amount of research on the analysis of existing and ongoing human activity, there ar...
This paper addresses the problem of human action detection /recognition by investigating interest po...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
The abrupt expansion of the Internet use over the last decade led to an uncontrollable amount of med...
AbstractWe propose robust multi-dimensional motion features for human activity recognition from firs...
A new, combined human activity detection method is proposed. Our method is based on Efros et al.’s m...
Abstract The automated analysis of activity in digital multimedia, and especially video, is gaining ...
We study the question of activity classification in videos and present a novel approach for recogniz...
The automated analysis of activity in digital multimedia, and especially video, is gaining more and ...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
Identifying human behaviors is a challenging research problem due to the complexity and variation of...
In this paper we address the problem of motion event detection in athlete recordings from individual...
International audienceThis work introduces a novel motion descriptor that enables human activity cla...
Abstract Human activity monitoring in the video sequences is an intriguing computer vision domain wh...
We propose robust multi-dimensional motion features for human activity recognition from first-person...
Despite the vast amount of research on the analysis of existing and ongoing human activity, there ar...
This paper addresses the problem of human action detection /recognition by investigating interest po...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
The abrupt expansion of the Internet use over the last decade led to an uncontrollable amount of med...
AbstractWe propose robust multi-dimensional motion features for human activity recognition from firs...