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Outlier Detection of Poisson-Distributed Targets Using a Seabed Sensor Network

Published: August 18, 2025 | arXiv ID: 2508.13099v1

By: Mingyu Kim, Daniel Stilwell, Jorge Jimenez

Potential Business Impact:

Finds unusual ships in the ocean.

This paper presents a framework for classifying and detecting spatial commission outliers in maritime environments using seabed acoustic sensor networks and log Gaussian Cox processes (LGCPs). By modeling target arrivals as a mixture of normal and outlier processes, we estimate the probability that a newly observed event is an outlier. We propose a second-order approximation of this probability that incorporates both the mean and variance of the normal intensity function, providing improved classification accuracy compared to mean-only approaches. We analytically show that our method yields a tighter bound to the true probability using Jensen's inequality. To enhance detection, we integrate a real-time, near-optimal sensor placement strategy that dynamically adjusts sensor locations based on the evolving outlier intensity. The proposed framework is validated using real ship traffic data near Norfolk, Virginia, where numerical results demonstrate the effectiveness of our approach in improving both classification performance and outlier detection through sensor deployment.

Country of Origin
🇺🇸 United States

Page Count
8 pages

Category
Computer Science:
Machine Learning (CS)