This thesis discusses the main issues of human activity recognition systems, including automatic human activity segmentation, non-meaningful activity rejection and multi-agent activity recognition, and presents the contribution of this project for these issues. Three contributions are presented in this thesis. Firstly, a background-state based auto-segmentation framework is proposed to segment human activities of interest from continuous input. Secondly, the non-meaningful activities is rejected be a pairwise likelihood ratio test (PLRT), which has a good performance while only relying on information of meaningful patterns. Thirdly, an observation decomposed hidden Markov model (ODHMM) is proposed to recognize multi-agent activities, where ...
Much of the current work in human behaviour modelling concentrates on activity recognition, recognis...
Detecting human actions using a camera has many possible applications in the security industry. When...
Human activity detection has evolved due to the advances and developments of machine learning techni...
Focusing on the application of Intelligent Security Supervisory Control System, this paper proposes ...
The purpose of this work is to find out whether a system based on a conventional Hidden Markov Model...
In order to facilitate proper interpretation of long measurements involving large data sets a novel ...
Human action in a video based application plays a significant role that alerts the researchers towar...
AbstractThis paper presents the novel theory for performing multi-agent activity recognition without...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
Towards the goal of realizing a generic automatic human activity recognition system, a new formalism...
Computer vision has brought about efficient human machine interaction and its area of research has b...
The problem of human activity recognition is central for understanding and predicting the human beha...
When developing a fully automatic system for evaluating motor activities performed by a person, it i...
19 pages, 8 figures.-- This article belongs to the Special Issue "Sensor Algorithms".In this paper a...
Current probabilistic models for activity recognition do not incorporate much sensory input data due...
Much of the current work in human behaviour modelling concentrates on activity recognition, recognis...
Detecting human actions using a camera has many possible applications in the security industry. When...
Human activity detection has evolved due to the advances and developments of machine learning techni...
Focusing on the application of Intelligent Security Supervisory Control System, this paper proposes ...
The purpose of this work is to find out whether a system based on a conventional Hidden Markov Model...
In order to facilitate proper interpretation of long measurements involving large data sets a novel ...
Human action in a video based application plays a significant role that alerts the researchers towar...
AbstractThis paper presents the novel theory for performing multi-agent activity recognition without...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
Towards the goal of realizing a generic automatic human activity recognition system, a new formalism...
Computer vision has brought about efficient human machine interaction and its area of research has b...
The problem of human activity recognition is central for understanding and predicting the human beha...
When developing a fully automatic system for evaluating motor activities performed by a person, it i...
19 pages, 8 figures.-- This article belongs to the Special Issue "Sensor Algorithms".In this paper a...
Current probabilistic models for activity recognition do not incorporate much sensory input data due...
Much of the current work in human behaviour modelling concentrates on activity recognition, recognis...
Detecting human actions using a camera has many possible applications in the security industry. When...
Human activity detection has evolved due to the advances and developments of machine learning techni...