In this paper, we propose a method to parse human motion in unconstrained Internet videos without labeling any videos for training. We use the training samples from a public image pose dataset to avoid the tediousness of labeling video streams. There are two main problems confronted. First, the distribution of images and videos are different. Second, no temporal information is available in the training images. To smooth the inconsistency between the labeled images and unlabeled videos, our algorithm iteratively incorporates the pose knowledge harvested from the testing videos into the image pose detector via an adjust-and-refine method. During this process, continuity and tracking constraints are imposed to leverage the spatio-temporal info...
We propose the use of a robust pose feature based on part based human detectors (Poselets) for the t...
In this paper, we present a systematic framework for re-cognizing realistic actions from videos in ...
In this thesis, we present a new class of object trackers that are based on a boosted Multiple Insta...
In this paper, we propose a method to parse human motion in unconstrained Internet videos without la...
We present a novel method for learning human motion models from unsegmented videos. We propose a uni...
We propose a semi-supervised self-training method for fine-tuning human pose estimations in videos t...
We propose an approach to learn action categories from static images that leverages prior observatio...
Abstract. We propose a fully automatic framework to detect and ex-tract arbitrary human motion volum...
Static image action recognition, which aims to recognize action based on a single image, usually rel...
The goal of human action recognition on videos is to determine in an automatic way what is happening...
We demonstrate how a large collection of unlabeled motion examples can help us in understanding huma...
Abstract — Human action recognition in unconstrained videos is a challenging problem with many appli...
International audienceObject detectors are typically trained on a large set of still images annotate...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
In this paper we address the problem of motion event detection in athlete recordings from individual...
We propose the use of a robust pose feature based on part based human detectors (Poselets) for the t...
In this paper, we present a systematic framework for re-cognizing realistic actions from videos in ...
In this thesis, we present a new class of object trackers that are based on a boosted Multiple Insta...
In this paper, we propose a method to parse human motion in unconstrained Internet videos without la...
We present a novel method for learning human motion models from unsegmented videos. We propose a uni...
We propose a semi-supervised self-training method for fine-tuning human pose estimations in videos t...
We propose an approach to learn action categories from static images that leverages prior observatio...
Abstract. We propose a fully automatic framework to detect and ex-tract arbitrary human motion volum...
Static image action recognition, which aims to recognize action based on a single image, usually rel...
The goal of human action recognition on videos is to determine in an automatic way what is happening...
We demonstrate how a large collection of unlabeled motion examples can help us in understanding huma...
Abstract — Human action recognition in unconstrained videos is a challenging problem with many appli...
International audienceObject detectors are typically trained on a large set of still images annotate...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
In this paper we address the problem of motion event detection in athlete recordings from individual...
We propose the use of a robust pose feature based on part based human detectors (Poselets) for the t...
In this paper, we present a systematic framework for re-cognizing realistic actions from videos in ...
In this thesis, we present a new class of object trackers that are based on a boosted Multiple Insta...