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Main Authors: Hinderer, Sven, Scheffler, Martina, Yang, Bin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.17345
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author Hinderer, Sven
Scheffler, Martina
Yang, Bin
author_facet Hinderer, Sven
Scheffler, Martina
Yang, Bin
contents Indoor localization of autonomous mobile robots (AMRs) can be realized with fiducial markers. Such systems require only a simple, monocular camera as sensor and fiducial markers as passive, identifiable position references that can be printed on a piece of paper and distributed in the area of interest. Thus, fiducial marker systems can be scaled to large areas with a minor increase in system complexity and cost. We investigate the localization behavior of the fiducial marker framework ArUco w.r.t. the placement of the markers including the number of markers, their orientation w.r.t. the camera, and the camera-marker distance. In addition, we propose a simple Kalman filter with adaptive measurement noise variances for real-time AMR tracking.
format Preprint
id arxiv_https___arxiv_org_abs_2509_17345
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Investigation of ArUco Marker Placement for Planar Indoor Localization
Hinderer, Sven
Scheffler, Martina
Yang, Bin
Image and Video Processing
Indoor localization of autonomous mobile robots (AMRs) can be realized with fiducial markers. Such systems require only a simple, monocular camera as sensor and fiducial markers as passive, identifiable position references that can be printed on a piece of paper and distributed in the area of interest. Thus, fiducial marker systems can be scaled to large areas with a minor increase in system complexity and cost. We investigate the localization behavior of the fiducial marker framework ArUco w.r.t. the placement of the markers including the number of markers, their orientation w.r.t. the camera, and the camera-marker distance. In addition, we propose a simple Kalman filter with adaptive measurement noise variances for real-time AMR tracking.
title Investigation of ArUco Marker Placement for Planar Indoor Localization
topic Image and Video Processing
url https://arxiv.org/abs/2509.17345