Robust Simultaneous Localization of Nodes and Targets in Sensor Networks Using Range-Only Measurements
P{\i}nar O\u{g}uz-Ekim, Jo\~ao Gomes, Jo\~ao Xavier, Paulo Oliveira

TL;DR
This paper introduces robust algorithms for simultaneous localization and tracking in sensor networks that effectively handle both Gaussian noise and outliers, improving accuracy and computational efficiency.
Contribution
It develops a novel incremental Majorization-Minimization approach for SLAT that manages outliers and reduces computational load in time-recursive scenarios.
Findings
Algorithms outperform existing methods under outlier conditions.
Performance is comparable to existing methods with Gaussian noise.
Proposed methods improve accuracy and robustness in practical sensor network applications.
Abstract
Simultaneous localization and tracking (SLAT) in sensor networks aims to determine the positions of sensor nodes and a moving target in a network, given incomplete and inaccurate range measurements between the target and each of the sensors. One of the established methods for achieving this is to iteratively maximize a likelihood function (ML), which requires initialization with an approximate solution to avoid convergence towards local extrema. This paper develops methods for handling both Gaussian and Laplacian noise, the latter modeling the presence of outliers in some practical ranging systems that adversely affect the performance of localization algorithms designed for Gaussian noise. A modified Euclidean Distance Matrix (EDM) completion problem is solved for a block of target range measurements to approximately set up initial sensor/target positions, and the likelihood function is…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Target Tracking and Data Fusion in Sensor Networks · Robotics and Sensor-Based Localization
