To perform anomaly detection for trajectory data, we study the Sequential Hausdorff Nearest-Neighbor Conformal Anomaly Detector (SHNN-CAD) approach, and propose an enhanced version called SHNN-CAD + . SHNN-CAD was introduced based on the theory of conformal prediction dealing with the problem of online detection. Unlike most related approaches requiring several not intuitive parameters, SHNN-CAD has the advantage of being parameter-light which enables the easy reproduction of experiments. We propose to adaptively determine the anomaly threshold during the online detection procedure instead of predefining it without any prior knowledge, which makes the algorithm more usable in practical applications. We present a modified Hausdorff distance ...
Improvement in sensor technology such as charge-coupled devices (CCD) as well as constant incrementa...
Abstract — We present ‘D-CAD, ’ a novel divergence-measure based classification method for anomaly d...
Traditional trajectory anomaly detection aims to find abnormal trajectory points or sequences using ...
Human operators of modern surveillance systems are confronted with an increasing amount of trajector...
Abnormal behaviour may indicate important objects and events in a wide variety of domains. One such ...
With a large amount of trajectory data generated every day, there is a high demand for developing ad...
Anomaly detection is still a challenging task for video surveillance due to complex environments and...
[Abstract] Anomaly detection is a sub-area of machine learning that deals with the development of m...
The operators of a maritime surveillance system are hardpressed to make complete use of the near rea...
Motion anomaly detection through video analysis is important for delivering autonomous situation awa...
Anomaly detection methods can be very useful in iden-tifying unusual or interesting patterns in data...
In this paper, we propose a new eccentricity- based anomaly detection principle and algorithm. It is...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
Lately there exist increasing demands for online abnormality monitoring over trajectory streams, whi...
The detection of anomalies and outliers is an important task for surveillance applications as it sup...
Improvement in sensor technology such as charge-coupled devices (CCD) as well as constant incrementa...
Abstract — We present ‘D-CAD, ’ a novel divergence-measure based classification method for anomaly d...
Traditional trajectory anomaly detection aims to find abnormal trajectory points or sequences using ...
Human operators of modern surveillance systems are confronted with an increasing amount of trajector...
Abnormal behaviour may indicate important objects and events in a wide variety of domains. One such ...
With a large amount of trajectory data generated every day, there is a high demand for developing ad...
Anomaly detection is still a challenging task for video surveillance due to complex environments and...
[Abstract] Anomaly detection is a sub-area of machine learning that deals with the development of m...
The operators of a maritime surveillance system are hardpressed to make complete use of the near rea...
Motion anomaly detection through video analysis is important for delivering autonomous situation awa...
Anomaly detection methods can be very useful in iden-tifying unusual or interesting patterns in data...
In this paper, we propose a new eccentricity- based anomaly detection principle and algorithm. It is...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
Lately there exist increasing demands for online abnormality monitoring over trajectory streams, whi...
The detection of anomalies and outliers is an important task for surveillance applications as it sup...
Improvement in sensor technology such as charge-coupled devices (CCD) as well as constant incrementa...
Abstract — We present ‘D-CAD, ’ a novel divergence-measure based classification method for anomaly d...
Traditional trajectory anomaly detection aims to find abnormal trajectory points or sequences using ...