Title :
Improving multiple-model context-aided tracking through an autocorrelation approach
Author :
Marti, E.D. ; Garcia, J. ; Crassidis, John L.
Author_Institution :
Group of Appl. A.I., Univ. Carlos III of Madrid, Colmenarejo, Spain
Abstract :
This paper continues a previous work, where the context-aided tracker “ConTracker” was used to detect suspicious behaviors in maritime vehicle trajectories. ConTracker takes into account map-based contextual information - which includes water depth, shipping channels and areas/buildings with a high strategy value - to determine anomalies in ship trajectories. The different areas act as repellers or attractors that modify the expected trajectory of the tracked vessel. In the original scheme, a multiple-model adaptive estimator (MMAE) is used to estimate the noise parameters of the tracking system: sudden increases on the output reflect unexpected maneuvers - such as entering a forbidden area - that are translated as alarms. The work presented here shows the results obtained by implementing a generalized version of the multiple-model adaptive estimator (GMMAE). While the former approach uses information of the last cycle to update the weight/importance of each model, our proposal calculates a likelihood value based on the time-domain autocorrelation function of the last few indicators. GMMAE provides a much faster response, which ultimately leads to a general performance boost: alarms are faster and clearer. Compared with previous works, GMMAE is particularly effective returning back to normal state after an alarm has been raised: this results in alarms with a better defined duration. Results are presented over several simulated trajectories, featuring a variety of realistic anomalies which are correctly identified. They include direct comparison with the previous approach, for an objective demonstration of the achieved improvement.
Keywords :
Kalman filters; correlation theory; marine engineering; marine safety; parameter estimation; ships; tracking; ConTracker; Kalman filter; attractor; generalized version; likelihood value; map-based contextual information; maritime vehicle trajectory; multiple-model adaptive estimator; multiple-model context-aided tracking; noise parameter estimation; objective demonstration; repeller; ship trajectory anomaly; shipping channel; suspicious behavior detection; time-domain autocorrelation function; water depth; Adaptation models; Correlation; Covariance matrix; Kalman filters; Noise; Radar tracking; Trajectory;
Conference_Titel :
Information Fusion (FUSION), 2012 15th International Conference on
Conference_Location :
Singapore
Print_ISBN :
978-1-4673-0417-7
Electronic_ISBN :
978-0-9824438-4-2