giaIndoorLoc – Auto-labeled WLAN + IMU dataset generated via VI-SLAM2tag
- 1. RWTH Aachen University
Description
This repository holds the data that belongs to the publication:
M. Laska, T. Schulz, J. Grottke, C. Blut and J. Blankenbach, "VI-SLAM2tag: Low-Effort Labeled Dataset Collection for Fingerprinting-Based Indoor Localization", [arXiv:2207.02668]
which is to appear at the 2022 IPIN conference.
It is split into the following sub-parts:
- giaIndoorLoc_raw: Raw data recorded via the VI-SLAM2tag android app (https://github.com/laskama/VI-SLAM2tag_app)
- giaIndoorLoc: Annotated dataset (generated from giaIndoorLoc_raw)
- evaluation_data: Raw trajectory data that is used during evaluation of labeling accuracy of VI-SLAM2tag (Control-Point + Total Station (Tachymeter))
- model_evaluation: Model weights of fitted models used during baseline performance section (VII-B) of paper. Required for reproducing experiments with repo (https://github.com/laskama/mCELindoorLoc)
For a detailed description, please refer to the given paper and the additional github repositories that host the implementations:
- https://github.com/laskama/VI-SLAM2tag_post
- https://github.com/laskama/VI-SLAM2tag_app
- https://github.com/laskama/mCELindoorLoc
Files
giaIndoorLoc.zip
Files
(461.6 MB)
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