Event detection in unseen scenarios is a challenging problem due to high variability of scene type, viewing direction, nature of scene entities, and environmental conditions. Existing event detection approaches mostly rely on context-specific tuning and training. Consequently, these techniques fail to achieve high scalability in a large surveillance network with hundreds of video feeds where scenario specific tuning/training is impossible. In this paper, we present a generic event detection approach where the extracted low-level features represent the global characteristics of the target scene instead of any context-specific information. From the temporal evolution of these context-invariant features over a timeframe, a fixed number of temp...
We present novel algorithms for detecting generic visual events from video. Target event models will...
In many areas of visual surveillance, the observed activity follows re-occurring patterns. This pape...
We explore a location-based approach for behavior mod-eling and abnormality detection. In contrast t...
Modern surveillance systems are becoming highly automated in terms of scene understanding and event ...
<p> Abnormal event detection is extremely important, especially for video surveillance. Nowadays, m...
We address in this paper the problem of abnormal event detection in video-surveillance. In this cont...
Abnormal event detection aims to automatically identify unusual events that do not comply with expec...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
Video anomaly detection plays a critical role for intelligent video surveillance. We present an abno...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
The availability of modern technology and the recent proliferation of devices and sensors have resul...
International audienceSecurity surveillance of public scene is closely relevant to routine safety of...
The purpose of this paper is to investigate a real-time system to detect contextindependent events i...
Proceedings of: 20th IEEE International Conference on Image Processing (ICIP 2013). Melbourne, Austr...
International audienceAbnormal event detection, also known as anomaly detection, is one challenging ...
We present novel algorithms for detecting generic visual events from video. Target event models will...
In many areas of visual surveillance, the observed activity follows re-occurring patterns. This pape...
We explore a location-based approach for behavior mod-eling and abnormality detection. In contrast t...
Modern surveillance systems are becoming highly automated in terms of scene understanding and event ...
<p> Abnormal event detection is extremely important, especially for video surveillance. Nowadays, m...
We address in this paper the problem of abnormal event detection in video-surveillance. In this cont...
Abnormal event detection aims to automatically identify unusual events that do not comply with expec...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
Video anomaly detection plays a critical role for intelligent video surveillance. We present an abno...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
The availability of modern technology and the recent proliferation of devices and sensors have resul...
International audienceSecurity surveillance of public scene is closely relevant to routine safety of...
The purpose of this paper is to investigate a real-time system to detect contextindependent events i...
Proceedings of: 20th IEEE International Conference on Image Processing (ICIP 2013). Melbourne, Austr...
International audienceAbnormal event detection, also known as anomaly detection, is one challenging ...
We present novel algorithms for detecting generic visual events from video. Target event models will...
In many areas of visual surveillance, the observed activity follows re-occurring patterns. This pape...
We explore a location-based approach for behavior mod-eling and abnormality detection. In contrast t...