AbstractWe propose robust multi-dimensional motion features for human activity recognition from first-person videos. The proposed features encode information about motion magnitude, direction and variation, and combine them with virtual inertial data generated from the video itself. The use of grid flow representation, per-frame normalization and temporal feature accumulation enhances the robustness of our new representation. Results on multiple datasets demonstrate that the proposed feature representation outperforms existing motion features, and importantly it does so independently of the classifier. Moreover, the proposed multi-dimensional motion features are general enough to make them suitable for vision tasks beyond those related to w...
In this paper we propose a novel method for human action recognition based on boosted key-frame sele...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
We propose robust multi-dimensional motion features for human activity recognition from first-person...
AbstractWe propose robust multi-dimensional motion features for human activity recognition from firs...
PhDAdvances in wearable technologies are facilitating the understanding of human activities using f...
This thesis explores motion trajectory-based approaches to recognize human actions in real-world, un...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
How to automatically label videos containing human motions is the task of human action recognition. ...
This paper addresses the problem of human action detection /recognition by investigating interest po...
We propose a set of kinematic features that are derived from the optical flow for human action recog...
International audienceRecently dense trajectories were shown to be an efficient video representation...
We propose a set of kinematic features that are derived from the optical flow for human action recog...
Human action recognition, as one of the most important topics in computer vision, has been extensive...
In this paper we propose a novel method for human action recognition based on boosted key-frame sele...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
We propose robust multi-dimensional motion features for human activity recognition from first-person...
AbstractWe propose robust multi-dimensional motion features for human activity recognition from firs...
PhDAdvances in wearable technologies are facilitating the understanding of human activities using f...
This thesis explores motion trajectory-based approaches to recognize human actions in real-world, un...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
International audienceThis paper introduces a state-of-the-art video representation and applies it t...
How to automatically label videos containing human motions is the task of human action recognition. ...
This paper addresses the problem of human action detection /recognition by investigating interest po...
We propose a set of kinematic features that are derived from the optical flow for human action recog...
International audienceRecently dense trajectories were shown to be an efficient video representation...
We propose a set of kinematic features that are derived from the optical flow for human action recog...
Human action recognition, as one of the most important topics in computer vision, has been extensive...
In this paper we propose a novel method for human action recognition based on boosted key-frame sele...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...