FLORIS and CLORIS: Hybrid Source and Network Localization Based on Ranges and Video
Beatriz Quintino Ferreira, Jo\~ao Gomes, Cl\'audia Soares, Jo\~ao P., Costeira

TL;DR
This paper introduces hybrid localization methods combining range and video angular data for wireless sensor networks, improving accuracy and robustness through convex optimization and automated calibration, validated by simulations and experiments.
Contribution
It presents a unified nonlinear least-squares framework for hybrid localization, with novel relaxation and calibration techniques, outperforming existing methods.
Findings
Hybrid methods outperform single-variable approaches.
Convex relaxation enables efficient one-shot localization.
Automated calibration reduces manual effort and improves accuracy.
Abstract
We propose hybrid methods for localization in wireless sensor networks fusing noisy range measurements with angular information (extracted from video). Compared with conventional methods that rely on a single sensed variable, this may pave the way for improved localization accuracy and robustness. We address both the single-source and network (i.e., cooperative multiple-source) localization paradigms, solving them via optimization of a convex surrogate. The formulations for hybrid localization are unified in the sense that we propose a single nonlinear least-squares cost function, fusing both angular and range measurements. We then relax the problem to obtain an estimate of the optimal positions. This contrasts with other hybrid approaches that alternate the execution of localization algorithms for each type of measurement separately, to progressively refine the position estimates.…
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