In this paper, we present a novel method to explore semantically meaningful visual information and identify the discriminative spatiotemporal relationships between them for real-time activity recognition. Our approach infers human activities using continuous egocentric (first-person-view) videos of object manipulations in an industrial setup. In order to achieve this goal, we propose a random forest that unifies randomization, discriminative relationships mining and a Markov temporal structure. Discriminative relationships mining helps us to model relations that distinguish different activities, while randomization allows us to handle the large feature space and prevents over-fitting. The Markov temporal structure provides temporally consis...
Action Detection is a complex task that aims to detect and classify human actions in video clips. Ty...
The recognition of actions and activities has a long history in the computer vision community. State...
International audienceMost of recent methods for action/activity recognition, usually based on stati...
We present a novel qualitative, dynamic length sliding window method which enables a mobile robot to...
For the effective operation of intelligent assistive systems working in real-world human environment...
This work proposes a graph mining based approach to mine a taxonomy of events from activities for co...
Understanding the activities taking place in a video is a challenging problem in Artificial Intellig...
Human activity detection from video that is recorded continuously over time has been gaining increas...
This paper presents a generic method for recognising and localising human actions in video based sol...
University of Technology, Sydney. Faculty of Engineering and Information Technology.With the improve...
Activity recognition is one of the fundamental problems of computer vision. An activity recognition ...
Temporal consistency is a strong cue in continuous data streams and especially in videos. We exploit...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
With the rapid increase in adoption of consumer technologies, including inexpensive but powerful ha...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Action Detection is a complex task that aims to detect and classify human actions in video clips. Ty...
The recognition of actions and activities has a long history in the computer vision community. State...
International audienceMost of recent methods for action/activity recognition, usually based on stati...
We present a novel qualitative, dynamic length sliding window method which enables a mobile robot to...
For the effective operation of intelligent assistive systems working in real-world human environment...
This work proposes a graph mining based approach to mine a taxonomy of events from activities for co...
Understanding the activities taking place in a video is a challenging problem in Artificial Intellig...
Human activity detection from video that is recorded continuously over time has been gaining increas...
This paper presents a generic method for recognising and localising human actions in video based sol...
University of Technology, Sydney. Faculty of Engineering and Information Technology.With the improve...
Activity recognition is one of the fundamental problems of computer vision. An activity recognition ...
Temporal consistency is a strong cue in continuous data streams and especially in videos. We exploit...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
With the rapid increase in adoption of consumer technologies, including inexpensive but powerful ha...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Action Detection is a complex task that aims to detect and classify human actions in video clips. Ty...
The recognition of actions and activities has a long history in the computer vision community. State...
International audienceMost of recent methods for action/activity recognition, usually based on stati...