textCollecting and annotating videos of realistic human actions is tedious, yet critical for training action recognition systems. We propose a method to actively request the most useful video annotations among a large set of unlabeled videos. Predicting the utility of annotating unlabeled video is not trivial, since any given clip may contain multiple actions of interest, and it need not be trimmed to temporal regions of interest. To deal with this problem, we propose a detection-based active learner to train action category models. We develop a voting-based framework to localize likely intervals of interest in an unlabeled clip, and use them to estimate the total reduction in uncertainty that annotating that clip would yield. On three data...
Automatically recognizing and localizing wide ranges of human actions are crucial for video understa...
Activity recognition in video has recently benefited from the use of the context e.g., inter-relatio...
International audienceAnnotating videos is cumbersome, expensive and not scalable. Yet, many strong ...
textCollecting and annotating videos of realistic human actions is tedious, yet critical for trainin...
This paper addresses the problem of automatic temporal annotation of realistic human actions in vide...
Research in human action recognition strives to develop increasingly generalized methods that are ro...
Human action recognition in videos draws strong research interest in computer vision because of its ...
Human behavior understanding is a fundamental problem of computer vision. It is an important compone...
2013 Spring.Includes bibliographical references.Emerging applications in human-computer interfaces, ...
Action recognition in videos has attracted a lot of attention in the past decade. In order to learn ...
International audienceWhen annotating complex multimedia data like videos, a human expert usually an...
textRecognizing activities in real-world videos is a difficult problem exacerbated by background clu...
This paper tackles the problem of localizing actions in long untrimmed videos. Different from existi...
Understanding human activities in unconstrained natural videos is a widely studied problem, yet it r...
Manual spatio-temporal annotation of human actions in videos is laborious, requires several annotato...
Automatically recognizing and localizing wide ranges of human actions are crucial for video understa...
Activity recognition in video has recently benefited from the use of the context e.g., inter-relatio...
International audienceAnnotating videos is cumbersome, expensive and not scalable. Yet, many strong ...
textCollecting and annotating videos of realistic human actions is tedious, yet critical for trainin...
This paper addresses the problem of automatic temporal annotation of realistic human actions in vide...
Research in human action recognition strives to develop increasingly generalized methods that are ro...
Human action recognition in videos draws strong research interest in computer vision because of its ...
Human behavior understanding is a fundamental problem of computer vision. It is an important compone...
2013 Spring.Includes bibliographical references.Emerging applications in human-computer interfaces, ...
Action recognition in videos has attracted a lot of attention in the past decade. In order to learn ...
International audienceWhen annotating complex multimedia data like videos, a human expert usually an...
textRecognizing activities in real-world videos is a difficult problem exacerbated by background clu...
This paper tackles the problem of localizing actions in long untrimmed videos. Different from existi...
Understanding human activities in unconstrained natural videos is a widely studied problem, yet it r...
Manual spatio-temporal annotation of human actions in videos is laborious, requires several annotato...
Automatically recognizing and localizing wide ranges of human actions are crucial for video understa...
Activity recognition in video has recently benefited from the use of the context e.g., inter-relatio...
International audienceAnnotating videos is cumbersome, expensive and not scalable. Yet, many strong ...