The use of pose estimation for human action recognition has seen a resurgence in previous years, due in part to the natural representation of the activity as a sequence of key poses and gestures. The use of sequence alignment techniques has aided the process of comparing between sequences of differing temporal rates, with aligned cluster analysis segmenting an observation into lower level action primitives. We suggest that the representation of a given action class via its lower level gestures can help to identify the higher-level action class label. We therefore present a method for the generation of key poses via the initial segmentation of an action class into gestures that are similar across numerous observations. We treat all training ...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Due to intra-class variation, camera jitter, background clutter, etc, human activity recognition is ...
This paper proposes a novel approach to pose-based human action recognition. Given a set of training...
Generating Local Temporal Poses from Gestures with Aligned Cluster Analysis for Human Action Recogni...
We address action recognition in videos by modeling the spatial-temporal structures of human poses. ...
In this paper, we propose a novel scheme for human action recognition that combines the advantages o...
Human action categories exhibit significant intra-class variation. Changes in viewpoint, human appea...
This thesis presents new methods in two closely related areas of computer vision: human pose estimat...
This thesis presents new methods in two closely related areas of computer vision: human pose estimat...
Altres ajuts: Avanza I+D ViCoMo (TSI-020400-2009-133) and DiCoMa (TSI-020400-2011-55)We present a no...
International audienceRecognizing human actions or analyzing human behaviors from 3D videos is an im...
This paper presents a unified framework for recognizing human action in video using human pose estim...
International audienceMost state-of-the-art methods for action recognition rely on a two-stream arch...
A prototype-based approach is introduced for action recognition. The approach represents an action a...
10 pages, project page: https://fabienbaradel.github.io/pose_rgb_attention_human_actionWe address hu...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Due to intra-class variation, camera jitter, background clutter, etc, human activity recognition is ...
This paper proposes a novel approach to pose-based human action recognition. Given a set of training...
Generating Local Temporal Poses from Gestures with Aligned Cluster Analysis for Human Action Recogni...
We address action recognition in videos by modeling the spatial-temporal structures of human poses. ...
In this paper, we propose a novel scheme for human action recognition that combines the advantages o...
Human action categories exhibit significant intra-class variation. Changes in viewpoint, human appea...
This thesis presents new methods in two closely related areas of computer vision: human pose estimat...
This thesis presents new methods in two closely related areas of computer vision: human pose estimat...
Altres ajuts: Avanza I+D ViCoMo (TSI-020400-2009-133) and DiCoMa (TSI-020400-2011-55)We present a no...
International audienceRecognizing human actions or analyzing human behaviors from 3D videos is an im...
This paper presents a unified framework for recognizing human action in video using human pose estim...
International audienceMost state-of-the-art methods for action recognition rely on a two-stream arch...
A prototype-based approach is introduced for action recognition. The approach represents an action a...
10 pages, project page: https://fabienbaradel.github.io/pose_rgb_attention_human_actionWe address hu...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Due to intra-class variation, camera jitter, background clutter, etc, human activity recognition is ...
This paper proposes a novel approach to pose-based human action recognition. Given a set of training...