Indoor Positioning Using Federated Kalman Filter
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Date
2018
Authors
Kerestecioglu, Feza
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Publisher
IEEE
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Abstract
In this paper, the performance of a multi-sensor fusion technique, namely Federated Kalman Filter (FKF) is studied in the context of indoor positioning problem. Kalman filters having centralized and decentralized structures are widely used in outdoor positioning and navigation applications. Global Positioning System (GI'S) is the most commonly used system for outdoor positioning/navigation, which cannot be used indoors due to the signal loss. In this study, a decentralized structure for FKF is applied in indoor positioning problem by taking its outdoor navigation performance into consideration. Simulations are perl4med with distance measurements, which are assumed to be calculated by using Received Signal Strength (RSS). Results gathered via different simulations are evaluated as promising for future studies.
Description
3rd International Conference on Computer Science and Engineering (UBMK) -- SEP 20-23, 2018 -- Sarajevo, BOSNIA & HERCEG
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Keywords
federated Kalman filter, data fusion, indoor positioning
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Citation
6
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N/A
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N/A
Source
2018 3rd International Conference on Computer Science and Engineering (Ubmk)
Volume
Issue
Start Page
483
End Page
488