LuViRA Dataset Validation and Discussion: Comparing Vision, Radio, and Audio Sensors for Indoor Localization

Yaman, Ilayda; Tian, Guoda; Tegler, Erik; Gulin, Jens, et al. (2024-09-20). LuViRA Dataset Validation and Discussion: Comparing Vision, Radio, and Audio Sensors for Indoor Localization. IEEE Journal of Indoor and Seamless Positioning and Navigation, 240 - 250
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DOI:
| Published | English
Authors:
Yaman, Ilayda ; Tian, Guoda ; Tegler, Erik ; Gulin, Jens , et al.
Department:
Integrated Electronic Systems
LTH Profile Area: AI and Digitalization
ELLIIT: the Linköping-Lund initiative on IT and mobile communication
Communications Engineering
Computer Vision and Machine Learning
LU Profile Area: Natural and Artificial Cognition
Department of Electrical and Information Technology
LU Profile Area: Light and Materials
LU Profile Area: Proactive Ageing
LTH Profile Area: Engineering Health
Stroke Imaging Research group
eSSENCE: The e-Science Collaboration
Mathematical Imaging Group
LTH Profile Area: Nanoscience and Semiconductor Technology
Embedded Electronics Engineering (M.Sc.)
Research Group:
Computer Vision and Machine Learning
Stroke Imaging Research group
Mathematical Imaging Group
Abstract:
We present a unique comparative analysis, and evaluation of vision, radio, and audio based localization algorithms. We create the first baseline for the aforementioned sensors using the recently published Lund University Vision, Radio, and Audio (LuViRA) dataset, where all the sensors are synchronized and measured in the same environment. Some of the challenges of using each specific sensor for indoor localization tasks are highlighted. Each sensor is paired with a current state-of-the-art localization algorithm and evaluated for different aspects: localization accuracy, reliability and sensitivity to environment changes, calibration requirements, and potential system complexity. Specifically, the evaluation covers the ORB-SLAM3 algorithm for vision-based localization with an RGB-D camera, a machine-learning algorithm for radio-based localization with massive MIMO technology, and the SFS2 algorithm for audio-based localization with distributed microphones. The results can serve as a guideline and basis for further development of robust and high-precision multi-sensory localization systems, e.g., through sensor fusion, and context- and environment-aware adaptation.
ISSN:
2832-7322
LUP-ID:
23c680e7-d75b-4c38-9c15-b976da5f3e20 | Link: https://lup.lub.lu.se/record/23c680e7-d75b-4c38-9c15-b976da5f3e20 | Statistics

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