KnE Social Sciences

ISSN: 2518-668X

The latest conference proceedings on humanities, arts and social sciences.

The Target Tracking Algorithm Based on Environment Technology

Published date: Nov 12 2018

Journal Title: KnE Social Sciences

Issue title: The 2018 International Conference of Organizational Innovation (ICOI-2018)

Pages:

DOI: 10.18502/kss.v3i10.3479

Authors:
Abstract:

In the complex environment, such as strong clutter and dense target, the target track instability, the algorithm based on environment technology is proposed. The environmental information of the target is obtained by means of point density statistics and ship collision avoidance model. In the different circumstances, plot feature is used to improve the stability of target tracking. Verified by actual environment, it shows that the target tracking algorithm based on environment can improve the target-tracking performance of VTS system in complex environment.

 

 

Keywords: environment, plot feature, VTS system, tracking algorithm

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