Gaussian Process Upper Confidence Bounds in Distributed Point Target Tracking over Wireless Sensor Networks
Xingchi Liu, Lyudmila Mihaylova, Jemin George, Tien Pham

TL;DR
This paper introduces a distributed Gaussian process approach with upper confidence bounds for reliable point target tracking in wireless sensor networks, providing theoretical guarantees and improved accuracy over existing methods.
Contribution
It develops a novel distributed Gaussian process method with uncertainty bounds and a hybrid Bayesian filter, offering theoretical guarantees and enhanced tracking accuracy.
Findings
UCBs encompass true target states with 88% and 42% higher probability in X and Y coordinates.
The proposed methods outperform confidence interval-based approaches in accuracy.
Numerical results validate the robustness and trustworthiness of the approach.
Abstract
Uncertainty quantification plays a key role in the development of autonomous systems, decision-making, and tracking over wireless sensor networks (WSNs). However, there is a need of providing uncertainty confidence bounds, especially for distributed machine learning-based tracking, dealing with different volumes of data collected by sensors. This paper aims to fill in this gap and proposes a distributed Gaussian process (DGP) approach for point target tracking and derives upper confidence bounds (UCBs) of the state estimates. A unique contribution of this paper includes the derived theoretical guarantees on the proposed approach and its maximum accuracy for tracking with and without clutter measurements. Particularly, the developed approaches with uncertainty bounds are generic and can provide trustworthy solutions with an increased level of reliability. A novel hybrid Bayesian…
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Taxonomy
TopicsEnergy Efficient Wireless Sensor Networks · Distributed Sensor Networks and Detection Algorithms · Gaussian Processes and Bayesian Inference
MethodsGaussian Process
