A Multi-Scenario Dataset for Long-Term Indoor Localization and Pedestrian Behavior Analysis in Dynamic Environments
Daten und Ressourcen
-
scenariosJPEG
Illustration of the three recording scenarios: extreme occluded, semi... File size: 6.2 MByte
-
number of scans.pngPNG
File size: 52.4 KByte
-
number of frames.pngPNG
File size: 180.6 KByte
-
sensor-platform.pngPNG
File size: 874.5 KByte
-
pedestrian detection camera.jpgJPEG
File size: 6.1 MByte
-
Dataset
-
A_Multi-Scenario_Dataset_for_Long-Term_Indoor_Loca.pdfPDF
Paper File size: 15.5 MByte
Cite this as
Faezeh Mortazavi, Junyi Wei, Tim Schimansky, Vinu Kamalasanan, Claus Brenner, Monika Sester (2025). A Multi-Scenario Dataset for Long-Term Indoor Localization and Pedestrian Behavior Analysis in Dynamic Environments [Data set]. LUIS.
https://doi.org/10.25835/gkytjesg
Retrieved: 13:23 19 Jul 2026 (UTC)
Zusätzliche Informationen
| Feld | Wert |
|---|---|
| Autor | Faezeh Mortazavi, Junyi Wei, Tim Schimansky, Vinu Kamalasanan, Claus Brenner, Monika Sester |
| Verantwortlicher | Faezeh Mortazavi |
| Zuletzt aktualisiert | Januar 14, 2026, 11:53 (UTC) |
| Erstellt | November 10, 2025, 10:33 (UTC) |
| Lizenz | Creative Commons Attribution 4.0 International |
| Dataset Size | 28.9 MByte |
Figure 1: Illustration of the three recording scenarios: extreme occluded, semi occluded, and free space. The left side shows the floor plan with sensor placement, pedestrian distribution, and ground-truth trajectory, while the right side provides sample views from the four fixed cameras.

Figure 2: Examples of pedestrian detection from the four fixed cameras under varying viewpoints and occlusion conditions.