Realizing the automated and online detection of crowd anomalies from surveillance CCTVs is a research-intensive and application-demanding task. This research proposes a novel technique for detecting crowd abnormalities through analyzing the spatial and temporal features of input video signals. This integrated solution defines an image descriptor (named spatio-temporal feature descriptor - STFD) that reflects the global motion information of crowds over time. A CNN has then been adopted to classify dominant or large-scale crowd abnormal behaviors. The work reported has focused on: 1) detecting moving objects in online (or near real-time) manner through spatio-temporal segmentations of crowds that is defined by the similarity of group trajec...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...
With the growth of urbanisation, the flow of people is increasing steadily every year. The likelihoo...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...
Video-based crowd behaviour detection aims at tackling challenging problems such as automating and i...
Abnormal crowd behaviors in high density situations can pose great danger to public safety. Despite ...
Realizing the automated and online detection of crowd anomalies from surveillance CCTVs is a researc...
This paper presents a new approach to crowd behaviour anomaly detection that uses a set of efficient...
© 2019 Meng YangVideo-based crowd motion analysis is an important problem in surveillance applicatio...
We introduce a novel method for abnormal crowd event detection in surveillance videos. Particularly...
With the rapidly increasing demands from surveillance and security industries, crowd behaviour analy...
Abnormal behavior detection in crowd scenes is continuously a challenge in the field of computer vis...
There is an increasing interest in crowd scene analysis in video surveillance due to the ubiquitousl...
We present a novel descriptor for crowd behavior analysis and anomaly detection. The goal is to meas...
The analysis and understanding of abnormal behaviours in human crowds is a challenging task in patte...
University of Technology Sydney. Faculty of Engineering and Information Technology.As the population...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...
With the growth of urbanisation, the flow of people is increasing steadily every year. The likelihoo...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...
Video-based crowd behaviour detection aims at tackling challenging problems such as automating and i...
Abnormal crowd behaviors in high density situations can pose great danger to public safety. Despite ...
Realizing the automated and online detection of crowd anomalies from surveillance CCTVs is a researc...
This paper presents a new approach to crowd behaviour anomaly detection that uses a set of efficient...
© 2019 Meng YangVideo-based crowd motion analysis is an important problem in surveillance applicatio...
We introduce a novel method for abnormal crowd event detection in surveillance videos. Particularly...
With the rapidly increasing demands from surveillance and security industries, crowd behaviour analy...
Abnormal behavior detection in crowd scenes is continuously a challenge in the field of computer vis...
There is an increasing interest in crowd scene analysis in video surveillance due to the ubiquitousl...
We present a novel descriptor for crowd behavior analysis and anomaly detection. The goal is to meas...
The analysis and understanding of abnormal behaviours in human crowds is a challenging task in patte...
University of Technology Sydney. Faculty of Engineering and Information Technology.As the population...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...
With the growth of urbanisation, the flow of people is increasing steadily every year. The likelihoo...
The advent of deep learning has brought in disruptive techniques with unprecedented accuracy rates i...