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Main Authors: Villien, Christophe, Frassati, Anne, Flament, Bruno
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.19538
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author Villien, Christophe
Frassati, Anne
Flament, Bruno
author_facet Villien, Christophe
Frassati, Anne
Flament, Bruno
contents Pedestrian Indoor localization based on modalities available in modern smartphones have been widely studied in literature and many of the specific challenges have been addressed. However, very few approaches consider the whole problem and proposed solutions are very often evaluated under very limited scenarios. We propose a fusion engine for localization that makes use of various data provided by a smartphone (Inertial sensors, pressure sensors, Wi-Fi, BLE, GNSS, map etc.) to provide a fused localization that is robust under harsh conditions (poor RSS coverage, device position change etc.). Moreover, our solution has been evaluated for hardware integration and tested over a large database including more than 250 experiments representing different scenarios, showing feasibility of lightweight implementation and good results over various conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2404_19538
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evaluation of An Indoor Localization Engine
Villien, Christophe
Frassati, Anne
Flament, Bruno
Signal Processing
Pedestrian Indoor localization based on modalities available in modern smartphones have been widely studied in literature and many of the specific challenges have been addressed. However, very few approaches consider the whole problem and proposed solutions are very often evaluated under very limited scenarios. We propose a fusion engine for localization that makes use of various data provided by a smartphone (Inertial sensors, pressure sensors, Wi-Fi, BLE, GNSS, map etc.) to provide a fused localization that is robust under harsh conditions (poor RSS coverage, device position change etc.). Moreover, our solution has been evaluated for hardware integration and tested over a large database including more than 250 experiments representing different scenarios, showing feasibility of lightweight implementation and good results over various conditions.
title Evaluation of An Indoor Localization Engine
topic Signal Processing
url https://arxiv.org/abs/2404.19538