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UltraBonesHip — CT–ultrasound dataset (femur & pelvis)
UltraBonesHip is a multi-modal CT–ultrasound dataset of cadaveric human femur and pelvis, shipped with self-contained code that reconstructs 3D ultrasound point clouds from the raw tracked B-mode frames in one command. It accompanies the Medical Image Analysis 2026 paper (see Citation).
Download
The dataset (data and reconstruction code) is packaged as a single archive,
UltraBonesHip.zip (~34 GB). Download and extract it — you'll get reconstruct.py,
code/, Dockerfile, requirements.txt, and specimen00–specimen04/. Run the
reconstruction steps below from the extracted folder.
Dataset summary
- 5 cadaveric specimens (specimen00, specimen01, specimen02, specimen03, specimen04).
- Anatomies: left femur, right femur, pelvis.
- Modalities: tracked B-mode ultrasound sweeps (every frame carries its optically-tracked probe pose) and CT bone-surface segmentations.
- Each anatomy is covered by several ultrasound sweeps (hundreds to ~1,500 frames each); every frame is pose-tagged, so the sweeps reconstruct directly into 3D point clouds in the CT coordinate frame.
- Probe calibration and all reconstruction parameters are baked into
reconstruct.py.
To be uploaded
The following will be released here soon:
- Bone segmentation masks — per-frame 2D bone-surface masks for the ultrasound images.
- Optimized probe poses — refined per-frame tracking poses that further improve the ultrasound–CT alignment.
Directory structure
UltraBonesHip/
├── README.md # this file
├── reconstruct.py # run US -> 3D reconstruction (model auto-downloads from HF)
├── Dockerfile # reconstruction environment
├── requirements.txt
├── .dockerignore
├── code/ # vendored reconstruction engine
│ ├── reconstruction/ # segmentation, projection, calibration, denoise, merge
│ └── utilities/
├── models/ # epoch_30_leave_12_out.pth auto-downloaded here on first run
├── reconstructed/ # OUTPUTS created by reconstruct.py
│ ├── intraoperative/specimenNN_<anatomy>.xyz # reconstructed US clouds
│ └── preoperative/specimenNN_<anatomy>.stl # matching CT bone meshes
├── specimen00/
│ ├── CT_bone_segmentations/ # *.stl (left_femur, right_femur, pelvis, ...)
│ └── ultrasound_records/
│ ├── left_femur_axial/
│ ├── left_femur_coronal/
│ ├── right_femur_axial/
│ ├── right_femur_coronal/
│ ├── left_pelvis_axial/
│ ├── left_pelvis_coronal/
│ ├── right_pelvis_axial/
│ └── right_pelvis_coronal/
│ └── recordNN/
│ ├── poses.csv # per-frame tracked probe poses (x,y,z + euler)
│ └── UltrasoundImages/ # raw B-mode frames (*.png)
└── ... # specimen00, specimen01, specimen02, specimen03, specimen04
Each recordNN/ is one ultrasound sweep.
Data format
CT_bone_segmentations/*.stl— CT bone-surface meshes (left_femur,right_femur,pelvis, and the per-side meshes).ultrasound_records/<sweep>/recordNN/poses.csv— one row per frame: image file (file_path), tracked probe pose (x, y, zin mm +euler_x, euler_y, euler_zin degrees),timestamp, image size.UltrasoundImages/*.png— raw B-mode ultrasound frames.
Reconstruct the US point clouds
Docker (recommended)
docker build -t ultrabones-recon .
docker run --gpus all -v "$(pwd)":/data ultrabones-recon # remove --gpus all to use CPU
Local (Python)
# 1) install a torch/torchvision build matching your CUDA (or CPU) from pytorch.org
# 2) then:
pip install -r requirements.txt
python reconstruct.py # all specimens; --specimen specimenNN to limit
On first run the segmentation model (epoch_30_leave_12_out.pth,
luohwu/UltraBones100k_segmentation)
is downloaded into models/. Outputs are written to reconstructed/:
intraoperative/specimenNN_<anatomy>.xyz (US clouds) and
preoperative/specimenNN_<anatomy>.stl (CT meshes). For a quick pipeline check add
--frame-stride 10 (coarse + fast); omit it for full-resolution clouds — the pelvis in
particular needs the full frame density.
Citation
If you use this dataset, please cite:
@article{wu2026neuralbonereg,
title = {NeuralBoneReg: An instance-specific label-free point cloud-based method for multi-modal bone surface registration},
author = {Wu, Luohong and Seibold, Matthias and Cavalcanti, Nicola A. and Ao, Yunke and Flepp, Roman and Massalimova, Aidana and Calvet, Lilian and F{\"u}rnstahl, Philipp},
journal = {Medical Image Analysis},
year = {2026},
doi = {10.1016/j.media.2026.104133}
}
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