Online and offline video clips provide rich information on dynamic events that occurred over a period of time, for example, human actions, crowd behaviours, and other subject pattern changes. Although substantial progresses have been made in the last 3 decades on 2D image feature processing and their applications in areas such as face matching and objects recognition, video event detection still remains one of the most challenging fields in computer vision study due to the wide range of continuous and non-linear signals engaged by an imaging system, and the inherent semantic difficulties in machine-based understanding of the detected feature patterns. For bridging the gap between the pixel-level image features and the semantic “meaning...
This thesis focuses on monitoring non-specific and unconstrained activities and events in videos in ...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Real-world actions occur often in crowded, dynamic environments. This poses a difficult challenge fo...
The aim of this project is to develop techniques for the automatic classification of events in a vid...
This paper highlights the progress of the research programme for investigating spatio-temporal volum...
Real-world environment introduces many variations into video recordings such as changing illuminatio...
During the past decade, the feature extraction and the knowledge acquisition based on video analysis...
Video processing for surveillance and security applications has become a research hotspot in the las...
This paper studies the use of volumetric features as an alternative to popular local descriptor appr...
Video content understanding for surveillance and security applications such as smart CCTV cameras ha...
This thesis has addressed the topic of event detection in videos, which is a challenging problem as ...
Video-based crowd behaviour detection aims at tackling challenging problems such as automating and i...
With the rapidly increasing demands from surveillance and security industries, crowd behaviour analy...
Based on the video frames, a spatial-temporal volume data structure represents more flexible process...
Although sliding window-based approaches have been quite successful in detecting objects in images, ...
This thesis focuses on monitoring non-specific and unconstrained activities and events in videos in ...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Real-world actions occur often in crowded, dynamic environments. This poses a difficult challenge fo...
The aim of this project is to develop techniques for the automatic classification of events in a vid...
This paper highlights the progress of the research programme for investigating spatio-temporal volum...
Real-world environment introduces many variations into video recordings such as changing illuminatio...
During the past decade, the feature extraction and the knowledge acquisition based on video analysis...
Video processing for surveillance and security applications has become a research hotspot in the las...
This paper studies the use of volumetric features as an alternative to popular local descriptor appr...
Video content understanding for surveillance and security applications such as smart CCTV cameras ha...
This thesis has addressed the topic of event detection in videos, which is a challenging problem as ...
Video-based crowd behaviour detection aims at tackling challenging problems such as automating and i...
With the rapidly increasing demands from surveillance and security industries, crowd behaviour analy...
Based on the video frames, a spatial-temporal volume data structure represents more flexible process...
Although sliding window-based approaches have been quite successful in detecting objects in images, ...
This thesis focuses on monitoring non-specific and unconstrained activities and events in videos in ...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Real-world actions occur often in crowded, dynamic environments. This poses a difficult challenge fo...