Abstract Surveillance system plays a significant role for achieving security monitoring in the place of crowd areas. Offline monitoring of these crowd activity is quite challenging because it requires huge number of human resources for attaining efficient tracking. For shortcoming these issue automated and intelligent based system must be developed for efficiently monitor crowd and detect abnormal activity. However the existing methods faces issues like irrelevant features, high cost and process complexity. In this current research context aware surveillance‐system utilising hybrid ResNet101‐ANN is developed for effective abnormal activity detection. For this proposed approach video acquired from surveillance camera is considered as input. ...
With the increasing number of anti-social events taking place, there has been a recent focus on secu...
Recently, the demand for surveillance system is increasing in real time application to enhance the s...
AbstractThis work addresses the problem of detecting human behavioural anomalies in crowded surveill...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
With the growth of urbanisation, the flow of people is increasing steadily every year. The likelihoo...
International audienceIt has long been a challenging task to detect an anomaly in a crowded scene. I...
Background and motivation: Every year, millions of Muslims worldwide come to Mecca to perform the Ha...
Automated detection of abnormal activity assumes a significant task in surveillance applications. Th...
© 2019 Meng YangVideo-based crowd motion analysis is an important problem in surveillance applicatio...
The objective of this research work is to detect abnormal events in surveillance videos. It is one o...
This study presents a scalable automated video surveillance framework that (1) automatically detects...
As the usage of CCTV cameras in outdoor and indoor locations has increased significantly, one needs ...
This study proposed an AlexNet-based crowd anomaly detection model in the video (image frames). The ...
Abstract The most critical objective in security surveillance is abnormal event detection in public ...
We introduce a novel method for abnormal crowd event detection in surveillance videos. Particularly...
With the increasing number of anti-social events taking place, there has been a recent focus on secu...
Recently, the demand for surveillance system is increasing in real time application to enhance the s...
AbstractThis work addresses the problem of detecting human behavioural anomalies in crowded surveill...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
With the growth of urbanisation, the flow of people is increasing steadily every year. The likelihoo...
International audienceIt has long been a challenging task to detect an anomaly in a crowded scene. I...
Background and motivation: Every year, millions of Muslims worldwide come to Mecca to perform the Ha...
Automated detection of abnormal activity assumes a significant task in surveillance applications. Th...
© 2019 Meng YangVideo-based crowd motion analysis is an important problem in surveillance applicatio...
The objective of this research work is to detect abnormal events in surveillance videos. It is one o...
This study presents a scalable automated video surveillance framework that (1) automatically detects...
As the usage of CCTV cameras in outdoor and indoor locations has increased significantly, one needs ...
This study proposed an AlexNet-based crowd anomaly detection model in the video (image frames). The ...
Abstract The most critical objective in security surveillance is abnormal event detection in public ...
We introduce a novel method for abnormal crowd event detection in surveillance videos. Particularly...
With the increasing number of anti-social events taking place, there has been a recent focus on secu...
Recently, the demand for surveillance system is increasing in real time application to enhance the s...
AbstractThis work addresses the problem of detecting human behavioural anomalies in crowded surveill...