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---
license: apache-2.0
---
# SweepNet Dataset
This repository contains three datasets used in [SweepNet](https://arxiv.org/abs/2407.06305). One dataset comprised of 20,000 sweep surfaces for neural sweeper training and two datasets used in quantitative evaluations. All datasets are preprocessed.
## Neural Sweeper Dataset
We created 20,000 sweep surface samples to train the neural sweeper, please refer to the supplementary material for the training details.
We provided sweep surfaces with 3, 4 and 5 control points, structured as follows:
```
neuralSweeperData/
βββ control_point_i/
β βββ sweep_surface_index/
β β βββ parameterse.txt # sweep surface parameters
β β βββ bspline.ply #visualized sweeping axis
β β βββ sample_profile.obj #visualized profile
β β βββ result_sweep.ply # sweep surface
β β βββ manifold_points.npy # key points on the sweep surface
β β βββ sweep_occupancy_v1.npy # Occupancy field of the sweep surface
```
## GC-Object Dataset
We sampled 50 generalised cylinder featured objects from internet and prior works [OreX](https://arxiv.org/abs/2211.12886), [GCD](https://vcc.tech/research/2015/GCD#:~:text=Our%20decomposition%20algorithm%20progressively%20builds,on%20decomposition%20to%20global%20optimization.).
We provide processed 3D models here. Please consider cite us and the prior works if you find the dataset useful.
```
GC_objects/
βββ model name/
β βββ oracle.obj # Oracle 3D model (not the input)
β βββ voxel_64_mc.off # 3D model reconstructed from input voxel
β βββ skeletal_prior.ply # Model skeletons
β βββ model_surface_point_cloud.ply # Surface point cloud for point cloud input modality
βββ test_names.npz # List of all model names
βββ voxel2pc.hdf5 # Model voxels and occupancy field used for training
βββ ae_voxel_points_samples.hdf5 # Model voxels and occupancy field used *only* for testing
```
## Quadrupeds Dataset
We use quadrupeds dataset from [Tulsiani et al.](https://github.com/shubhtuls/volumetricPrimitives/issues/7) to benchmark SweepNet. We provide the processed data here, please cite us if you used our processed data.
```
quadrupeds/
βββ model name/
β βββ oracle.obj # Oracle 3D model (not the input)
β βββ skeletal_prior.ply # Model skeletons
β βββ model_surface_point_cloud.ply # Surface point cloud for point cloud input modality
βββ test_names.npz # List of all model names
βββ voxel2pc.hdf5 # Model voxels and occupancy field used for training
βββ ae_voxel_points_samples.hdf5 # Model voxels and occupancy field used *only* for testing
``` |