Classifying the objects’ trajectories extracted from Closed-Circuit Television (CCTV) feeds is a key video analytic module to systematize or rather help to automate both the real-time monitoring and the video forensic process. Machine learning algorithms have been heavily proposed to solve the problem of movement classification. However, they still suffer from various limitations such as their limited ability to cope with multi-dimensional data streams or data with temporal behaviour. Recently, the Hierarchical Temporal Memory (HTM) and its implementation, the Cortical Learning Algorithms (CLA) have proven their success to detect temporal anomalies from a noisy data stream. In this paper, a novel CLA-based movement classification algorithm ...
Surveillance is ubiquitous in our communities which can be utilized to deal with multiple security i...
This paper presents an intelligent framework video surveillance system in an academic environment th...
Analysis of motion patterns is an effective approach for anomaly detection and behavior prediction. ...
The need for proper and acceptable video forensics process is necessary due to the proliferation and...
Movement classification or activity analysis is one of the most important areas in video surveillanc...
Motion anomaly detection through video analysis is important for delivering autonomous situation awa...
Improvement in sensor technology such as charge-coupled devices (CCD) as well as constant incrementa...
Transforming human understanding in visual data to electronic vision systems has been one of the aim...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
This paper presents an approach to the problem of automatically classifying events detected by video...
This article presents an exemplary prototype implementation of an Application Programming Interface ...
Anomaly detection in several deep learning frameworks are recently presented on real-time video data...
Abnormal behaviour detection has attracted signification amount of attention in the past decade due ...
Anomaly detection in surveillance videos is attracting an increasing amount of attention. Despite th...
Advisors: Mario Vento, Luc Brun. Date and location of PhD thesis defense: 24 February 2014, Universi...
Surveillance is ubiquitous in our communities which can be utilized to deal with multiple security i...
This paper presents an intelligent framework video surveillance system in an academic environment th...
Analysis of motion patterns is an effective approach for anomaly detection and behavior prediction. ...
The need for proper and acceptable video forensics process is necessary due to the proliferation and...
Movement classification or activity analysis is one of the most important areas in video surveillanc...
Motion anomaly detection through video analysis is important for delivering autonomous situation awa...
Improvement in sensor technology such as charge-coupled devices (CCD) as well as constant incrementa...
Transforming human understanding in visual data to electronic vision systems has been one of the aim...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
This paper presents an approach to the problem of automatically classifying events detected by video...
This article presents an exemplary prototype implementation of an Application Programming Interface ...
Anomaly detection in several deep learning frameworks are recently presented on real-time video data...
Abnormal behaviour detection has attracted signification amount of attention in the past decade due ...
Anomaly detection in surveillance videos is attracting an increasing amount of attention. Despite th...
Advisors: Mario Vento, Luc Brun. Date and location of PhD thesis defense: 24 February 2014, Universi...
Surveillance is ubiquitous in our communities which can be utilized to deal with multiple security i...
This paper presents an intelligent framework video surveillance system in an academic environment th...
Analysis of motion patterns is an effective approach for anomaly detection and behavior prediction. ...