Published 2026 | Version v3
Dataset Open

Synchronized raw radar and three-dimensional human pose data for prehabilitation exercises

  • 1. ROR icon Technical University of Munich

Description

We present a synchronized dataset of millimeter-wave radar measurements and camera-derived 3D human pose annotations acquired during prehabilitation exercises. Thirteen volunteers performed nineteen standing activities targeting strength, flexibility, balance, and core stability following a standardized recording protocol. Radar data were collected with a four-dimensional in-phase and quadrature millimeter-wave radar configured with 10 transmit antennas and 20 receivers and operated in stepped-frequency continuous-wave mode over 62–66.5 GHz with 100 frequency tones, yielding a frame rate of approximately 13 Hz. In parallel, an RGB-D camera recorded video at 30 fps, and 33-joint 3D skeletal landmarks were extracted offline using MediaPipe BlazePose Full and remapped to a COCO-style 17-joint representation. The radar and pose streams were temporally aligned by nearest-neighbor timestamp matching. The dataset includes subject-level files containing IQ radar data, camera timestamps with alignment indices, and 3D joint coordinates in a local hip-centered coordinate system. These data may support research on radar-based human pose estimation and multimodal sensing for rehabilitation-related applications.

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Data Usage Agreement / Data Use Notice

This dataset is openly available under the Creative Commons Attribution 4.0 International license (CC BY 4.0). By downloading or using any files from this record, users confirm that they have read and agree to follow the terms described in Data_Usage_Agreement.pdf.

In particular, users must cite the dataset DOI and must not attempt to re-identify, contact, track, or profile any participant. The data may be accessed and downloaded without registration, login, authentication, or manual approval.

Files

Data_Usage_Agreement.pdf

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