Analyzing Trajectory Gaps to Find Possible Rendezvous Region

Author:

Sharma Arun1ORCID,Shekhar Shashi1

Affiliation:

1. University of Minnesota, Twin Cities, Minneapolis, Minnesota, USA

Abstract

Given trajectory data with gaps, we investigate methods to identify possible rendezvous regions. The problem has societal applications such as improving maritime safety and regulatory enforcement. The challenges come from two aspects. First, gaps in trajectory data make it difficult to identify regions where moving objects may have rendezvoused for nefarious reasons. Hence, traditional linear or shortest path interpolation methods may not be able to detect such activities, since objects in a rendezvous may have traveled away from their usual routes to meet. Second, user detecting a rendezvous regions involve a large number of gaps and associated trajectories, making the task computationally very expensive. In preliminary work, we proposed a more effective way of handling gaps and provided examples to illustrate potential rendezvous regions. In this article, we are providing detailed experiments with both synthetic and real-world data. Experiments on synthetic data show that the accuracy improved by 50 percent, which is substantial as compared to the baseline approach. In this article, we propose a refined algorithm Temporal Selection Search for finding a potential rendezvous region and finding an optimal temporal range to improve computational efficiency. We also incorporate two novel spatial filters: (i) a Static Ellipse Intersection Filter and (ii) a Dynamic Circle Intersection Spatial Filter. Both the baseline and proposed approaches account for every possible rendezvous pattern. We provide a theoretical evaluation of the algorithms correctness and completeness along with a time complexity analysis. Experimental results on synthetic and real-world maritime trajectory data show that the proposed approach substantially improves the area pruning effectiveness and computation time over the baseline technique. We also performed experiments based on accuracy and precision on synthetic dataset on both proposed and baseline techniques.

Funder

National Geospatial-Intelligence Agency

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference26 articles.

1. Efficient trajectory joins using symbolic representations

2. Petko Bakalov and Vassilis J. Tsotras. 2006. Continuous spatiotemporal trajectory joins. In Proceedings of the International Conference on GeoSensor Networks. Springer, 109–128.

3. MarineCadastre.gov;https://marinecadastre.gov/ais/,2020

4. Robust and fast similarity search for moving object trajectories

5. Design and evaluation of trajectory join algorithms

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1. A Hybrid Framework for Maritime Surveillance: Detecting Illegal Activities through Vessel Behaviors and Expert Rules Fusion;Sensors;2024-08-30

2. Physics-based Abnormal Trajectory Gap Detection;ACM Transactions on Intelligent Systems and Technology;2024-06-15

3. Towards Responsible Spatial Data Science and Geo-AI;Proceedings of the 2023 Fifteenth International Conference on Contemporary Computing;2023-08-03

4. Dwell Regions: Generalized Stay Regions for Streaming and Archival Trajectory Data;ACM Transactions on Spatial Algorithms and Systems;2023-04-12

5. Towards a tighter bound on possible-rendezvous areas;Proceedings of the 30th International Conference on Advances in Geographic Information Systems;2022-11

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