Distributed Gaussian Mixture PHD Filtering under Communication Constraints
Shiraz Khan, Yi-Chieh Sun, and Inseok Hwang

TL;DR
This paper introduces a communication-efficient distributed GM-PHD filter that guarantees asymptotic optimality and reduces false positives in multi-target tracking within resource-limited sensor networks.
Contribution
It develops a novel distributed GM-PHD filtering algorithm using probabilistic communication and weighted average consensus to ensure convergence and efficiency.
Findings
Ensures asymptotic convergence to optimal solutions.
Reduces communication bandwidth via probabilistic rules.
Effectively avoids false positives in tracking.
Abstract
The Gaussian Mixture Probability Hypothesis Density (GM-PHD) filter is an almost exact closed-form approximation to the Bayes-optimal multi-target tracking algorithm. Due to its optimality guarantees and ease of implementation, it has been studied extensively in the literature. However, the challenges involved in implementing the GM-PHD filter efficiently in a distributed (multi-sensor) setting have received little attention. The existing solutions for distributed PHD filtering either have a high computational and communication cost, making them infeasible for resource-constrained applications, or are unable to guarantee the asymptotic convergence of the distributed PHD algorithm to an optimal solution. In this paper, we develop a distributed GM-PHD filtering recursion that uses a probabilistic communication rule to limit the communication bandwidth of the algorithm, while ensuring…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Distributed Sensor Networks and Detection Algorithms · Gaussian Processes and Bayesian Inference
