In data science, anomaly detection is the process of identifying the items, events or observations which do not conform to expected patterns in a dataset. As widely acknowledged in the computer vision community and security management, discovering suspicious events is the key issue for abnormal detection in video surveillance. The important steps in identifying such events include stream data segmentation and hidden patterns discovery. However, the crucial challenge in stream data segmentation and hidden patterns discovery are the number of coherent segments in surveillance stream and the number of traffic patterns are unknown and hard to specify. Therefore, in this paper we revisit the abnormality detection problem through the lens of Baye...
a m enti iou eatu second phase, the co-occurrence matrix is used as a potential function in a Markov...
With the increasing focus on safety and security in public areas, anomaly detection in video surveil...
This paper proposes extracting salient objects from motion fields. Salient object detection is an im...
In data science, anomaly detection is the process of identifying the items, events or observations w...
This paper examines a new problem in large scale stream data: abnormality detection which is localiz...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
The importance of detecting anomalies in surveillance camera data cannot be overemphasized. With the...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
Abnormal detection refers to infrequent data instances that come from a diverse cluster or distribut...
A novel dynamic Bayesian nonparametric topic model for anomaly detection in video is proposed in thi...
This PhD research has proposed novel computer vision and machine learning algorithms for the problem...
The rapid increase in the deployment of CCTV systems has led to a greater demand for algorithms that...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
Abstract—Existing anomaly detection methods in video surveil-lance exhibit lack of congruence betwee...
Detecting anomalies in surveillance videos, that is, finding events or objects with low probability ...
a m enti iou eatu second phase, the co-occurrence matrix is used as a potential function in a Markov...
With the increasing focus on safety and security in public areas, anomaly detection in video surveil...
This paper proposes extracting salient objects from motion fields. Salient object detection is an im...
In data science, anomaly detection is the process of identifying the items, events or observations w...
This paper examines a new problem in large scale stream data: abnormality detection which is localiz...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
The importance of detecting anomalies in surveillance camera data cannot be overemphasized. With the...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
Abnormal detection refers to infrequent data instances that come from a diverse cluster or distribut...
A novel dynamic Bayesian nonparametric topic model for anomaly detection in video is proposed in thi...
This PhD research has proposed novel computer vision and machine learning algorithms for the problem...
The rapid increase in the deployment of CCTV systems has led to a greater demand for algorithms that...
International audienceAbnormal event detection is a challenging problem in video surveillance which ...
Abstract—Existing anomaly detection methods in video surveil-lance exhibit lack of congruence betwee...
Detecting anomalies in surveillance videos, that is, finding events or objects with low probability ...
a m enti iou eatu second phase, the co-occurrence matrix is used as a potential function in a Markov...
With the increasing focus on safety and security in public areas, anomaly detection in video surveil...
This paper proposes extracting salient objects from motion fields. Salient object detection is an im...