peer reviewedThis paper introduces a new approach to unsupervised detection of abnormal sequences of images in video surveillance data. We leverage an online object detection method and statistical process control techniques in order to identify suspicious sequences of events. Our method assumes a training phase in which the spatial distribution of objects is learned, followed by a chart-based tracking process. We evaluate the performance of our method on a standard dataset and have implemented a publicly available opensource prototype
Abstract–The OBSERVER is a video surveillance system that detects and predicts abnormal behaviors ai...
An approach is proposed for robust online behaviour recognition and abnormality detection based on d...
We present a novel approach for video parsing and si-multaneous online learning of dominant and anom...
Abnormal detection refers to infrequent data instances that come from a diverse cluster or distribut...
In this paper, we present a unified approach for abnormal behavior detection and group behavior anal...
We address in this paper the problem of abnormal event detection in video-surveillance. In this cont...
Millions of surveillance cameras are currently installed in public places around the world, making i...
The presence of cameras for surveillance purposes are very common nowadays (train stations, public t...
This paper investigates the detection of global abnormal behaviours across a network of CCTV cameras...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
The objective of this research work is to detect abnormal events in surveillance videos. It is one o...
This book chapter was published in the IGI Global [© 2017 IGI Global] and the definite version is av...
This paper proposes extracting salient objects from motion fields. Salient object detection is an im...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
Abstract–The OBSERVER is a video surveillance system that detects and predicts abnormal behaviors ai...
An approach is proposed for robust online behaviour recognition and abnormality detection based on d...
We present a novel approach for video parsing and si-multaneous online learning of dominant and anom...
Abnormal detection refers to infrequent data instances that come from a diverse cluster or distribut...
In this paper, we present a unified approach for abnormal behavior detection and group behavior anal...
We address in this paper the problem of abnormal event detection in video-surveillance. In this cont...
Millions of surveillance cameras are currently installed in public places around the world, making i...
The presence of cameras for surveillance purposes are very common nowadays (train stations, public t...
This paper investigates the detection of global abnormal behaviours across a network of CCTV cameras...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
The objective of this research work is to detect abnormal events in surveillance videos. It is one o...
This book chapter was published in the IGI Global [© 2017 IGI Global] and the definite version is av...
This paper proposes extracting salient objects from motion fields. Salient object detection is an im...
This thesis addresses the issues of applying advanced video analytics for surveillance applications....
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
Abstract–The OBSERVER is a video surveillance system that detects and predicts abnormal behaviors ai...
An approach is proposed for robust online behaviour recognition and abnormality detection based on d...
We present a novel approach for video parsing and si-multaneous online learning of dominant and anom...