Indoor Positioning Using PnP Problem on Mobile Phone Images

<b> </b>As people grow accustomed to effortless outdoor navigation, there is a rising demand for similar possibilities indoors as well. Unfortunately, indoor localization, being one of the requirements for navigation, continues to be a problem without a clear solution. In this article, w...

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Main Authors: Hana Kubíčková, Karel Jedlička, Radek Fiala, Daniel Beran
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/6/368
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spelling doaj-3b244c5a45a64c05b1d7f613f854b2472020-11-25T03:20:45ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-06-01936836810.3390/ijgi9060368Indoor Positioning Using PnP Problem on Mobile Phone ImagesHana Kubíčková0Karel Jedlička1Radek Fiala2Daniel Beran3Plan4all, 33012 Horní Bříza, Czech RepublicDepartment of Geomatics, University of West Bohemia, 30100 Plzeň, Czech RepublicDepartment of Geomatics, University of West Bohemia, 30100 Plzeň, Czech RepublicDepartment of Geomatics, University of West Bohemia, 30100 Plzeň, Czech Republic<b> </b>As people grow accustomed to effortless outdoor navigation, there is a rising demand for similar possibilities indoors as well. Unfortunately, indoor localization, being one of the requirements for navigation, continues to be a problem without a clear solution. In this article, we are proposing a method for an indoor positioning system using a single image. This is made possible using a small preprocessed database of images with known control points as the only preprocessing needed. Using feature detection with the SIFT (Scale Invariant Feature Transform) algorithm, we can look through the database and find an image that is the most similar to the image taken by a user. Such a pair of images is then used to find coordinates of a database of images using the PnP problem. Furthermore, projection and essential matrices are determined to calculate the user image localization—determining the position of the user in the indoor environment. The benefits of this approach lie in the single image being the only input from a user and the lack of requirements for new onsite infrastructure. Thus, our approach enables a more straightforward realization for building management.https://www.mdpi.com/2220-9964/9/6/368indoor positioning systemimage-based positioning systemcomputer visionSIFTfeature detectionfeature description
collection DOAJ
language English
format Article
sources DOAJ
author Hana Kubíčková
Karel Jedlička
Radek Fiala
Daniel Beran
spellingShingle Hana Kubíčková
Karel Jedlička
Radek Fiala
Daniel Beran
Indoor Positioning Using PnP Problem on Mobile Phone Images
ISPRS International Journal of Geo-Information
indoor positioning system
image-based positioning system
computer vision
SIFT
feature detection
feature description
author_facet Hana Kubíčková
Karel Jedlička
Radek Fiala
Daniel Beran
author_sort Hana Kubíčková
title Indoor Positioning Using PnP Problem on Mobile Phone Images
title_short Indoor Positioning Using PnP Problem on Mobile Phone Images
title_full Indoor Positioning Using PnP Problem on Mobile Phone Images
title_fullStr Indoor Positioning Using PnP Problem on Mobile Phone Images
title_full_unstemmed Indoor Positioning Using PnP Problem on Mobile Phone Images
title_sort indoor positioning using pnp problem on mobile phone images
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-06-01
description <b> </b>As people grow accustomed to effortless outdoor navigation, there is a rising demand for similar possibilities indoors as well. Unfortunately, indoor localization, being one of the requirements for navigation, continues to be a problem without a clear solution. In this article, we are proposing a method for an indoor positioning system using a single image. This is made possible using a small preprocessed database of images with known control points as the only preprocessing needed. Using feature detection with the SIFT (Scale Invariant Feature Transform) algorithm, we can look through the database and find an image that is the most similar to the image taken by a user. Such a pair of images is then used to find coordinates of a database of images using the PnP problem. Furthermore, projection and essential matrices are determined to calculate the user image localization—determining the position of the user in the indoor environment. The benefits of this approach lie in the single image being the only input from a user and the lack of requirements for new onsite infrastructure. Thus, our approach enables a more straightforward realization for building management.
topic indoor positioning system
image-based positioning system
computer vision
SIFT
feature detection
feature description
url https://www.mdpi.com/2220-9964/9/6/368
work_keys_str_mv AT hanakubickova indoorpositioningusingpnpproblemonmobilephoneimages
AT kareljedlicka indoorpositioningusingpnpproblemonmobilephoneimages
AT radekfiala indoorpositioningusingpnpproblemonmobilephoneimages
AT danielberan indoorpositioningusingpnpproblemonmobilephoneimages
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