Decentralized Clustering based on Robust Estimation and Hypothesis Testing
Dominique Pastor, Elsa Dupraz, Fran\c{c}ois-Xavier Socheleau

TL;DR
This paper introduces a decentralized clustering algorithm for sensor networks that uses hypothesis testing and robust estimation to determine cluster membership without prior knowledge of the number of clusters, suitable for autonomous sensor networks.
Contribution
It proposes a novel decentralized clustering method based on hypothesis testing and M-estimation, overcoming limitations of existing algorithms regarding prior knowledge and sensitivity to initialization.
Findings
Performs clustering without knowing the number of clusters.
Less sensitive to initialization than existing algorithms.
Efficiently operates in sensor networks without fusion centers.
Abstract
This paper considers a network of sensors without fusion center that may be difficult to set up in applications involving sensors embedded on autonomous drones or robots. In this context, this paper considers that the sensors must perform a given clustering task in a fully decentralized setup. Standard clustering algorithms usually need to know the number of clusters and are very sensitive to initialization, which makes them difficult to use in a fully decentralized setup. In this respect, this paper proposes a decentralized model-based clustering algorithm that overcomes these issues. The proposed algorithm is based on a novel theoretical framework that relies on hypothesis testing and robust M-estimation. More particularly, the problem of deciding whether two data belong to the same cluster can be optimally solved via Wald's hypothesis test on the mean of a Gaussian random vector. The…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Bayesian Methods and Mixture Models
