Abstract. Learning activity models continuously from streaming videos is an immensely important problem in video surveillance, video index-ing, etc. Most of the research on human activity recognition has mainly focused on learning a static model considering that all the training in-stances are labeled and present in advance, while in streaming videos new instances continuously arrive and are not labeled. In this work, we propose a continuous human activity learning framework from streaming videos by intricately tying together deep networks and active learning. This allows us to automatically select the most suitable features and to take the advantage of incoming unlabeled instances to improve the exist-ing model incrementally. Given the seg...
Thesis (Ph.D.)--University of Washington, 2020With increasingly high interest in assistive robots an...
This paper presents an algorithm for learning the underlying models which generate streams of observ...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...
Abstract. Learning activity models continuously from streaming videos is an immensely important prob...
Abstract—Most of the research on human activity recognition has focused on learning a static model c...
Most of the state-of-the-art approaches to human activity recognition in video need an intensive tra...
Recognising human activities from streaming sources poses unique challenges to learning algorithms. ...
Understanding human activities in unconstrained natural videos is a widely studied problem, yet it r...
Recognising human activities from streaming sources poses unique challenges to learning algorithms....
Recognizing multiple types of actions appearing in a continuous temporal order from a streaming vide...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Activity recognition in video has recently benefited from the use of the context e.g., inter-relatio...
Continual learning is an emerging research challenge in human activity recognition (HAR). As an incr...
In this paper, we present a new deep learning-based human activity recognition technique. First, we ...
This thesis contributes to the literature of understanding and recognizing human activities in video...
Thesis (Ph.D.)--University of Washington, 2020With increasingly high interest in assistive robots an...
This paper presents an algorithm for learning the underlying models which generate streams of observ...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...
Abstract. Learning activity models continuously from streaming videos is an immensely important prob...
Abstract—Most of the research on human activity recognition has focused on learning a static model c...
Most of the state-of-the-art approaches to human activity recognition in video need an intensive tra...
Recognising human activities from streaming sources poses unique challenges to learning algorithms. ...
Understanding human activities in unconstrained natural videos is a widely studied problem, yet it r...
Recognising human activities from streaming sources poses unique challenges to learning algorithms....
Recognizing multiple types of actions appearing in a continuous temporal order from a streaming vide...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Activity recognition in video has recently benefited from the use of the context e.g., inter-relatio...
Continual learning is an emerging research challenge in human activity recognition (HAR). As an incr...
In this paper, we present a new deep learning-based human activity recognition technique. First, we ...
This thesis contributes to the literature of understanding and recognizing human activities in video...
Thesis (Ph.D.)--University of Washington, 2020With increasingly high interest in assistive robots an...
This paper presents an algorithm for learning the underlying models which generate streams of observ...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...