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WideDepth train
Dataset Summary
WideDepth train is an outdoor multi-view fisheye training dataset for depth/disparity learning and domain adaptation.
The dataset accompanies the paper WideDepth: Millimeter-Accurate Benchmark for Fisheye Depth Estimation, accepted to ICRA 2026.
It provides synchronized frames across:
- left fisheye RGB
- right fisheye RGB
- upper equirect RGB
- lower virtual equirect RGB
- equirect disparity
- fisheye depth
This subset was captured outdoors with a handheld rig (fisheye stereo + LiDAR), then rectified/warped to equirect views and paired with sparse LiDAR-derived labels.
Dataset Structure
Expected layout:
WideDepth_train/
left_fisheye/
right_fisheye/
equirect_up/
equirect_down_virt/
disp_equirect/
depth_fisheye/
manifests/
All modality folders use synchronized zero-padded numeric names (for example 00000.png, 00001.png, ...).
Content by folder:
left_fisheye,right_fisheye,equirect_up,equirect_down_virt: RGB images (uint8, 3-channel)disp_equirect: disparity map image files (typically scaled by100)depth_fisheye: projected sparse depth map image files in left fisheye frame (typically depth inmm)manifests: filtering/reindexing outputs and mapping files
Source Data and Processing
High-level pipeline:
- Outdoor handheld capture with a synchronized fisheye stereo + LiDAR rig.
- Stereo rectification and warping to equirectangular views.
- Projection of merged LiDAR points to the camera frame to generate sparse depth and derived disparity targets.
- Release preparation with optional RGB anonymization (face/plate blur) and synchronized frame indexing across modalities.
Projection model:
- Equirectangular warping and LiDAR-to-image projection are performed with the Double Sphere camera model using calibrated intrinsics/extrinsics.
Capture setup (train release):
- Two ZED X One fisheye cameras in a vertical stereo configuration.
- Camera lens FoV is approximately 180° horizontal and 120° vertical; calibration was done at
1920x1080. - Two Livox Mid-360 LiDARs with partially overlapping FoVs.
- Typical sensor rates: cameras at 30 Hz and LiDARs at 10 Hz, aligned by timestamp in ROS.
- Data was captured outdoors (city areas, parks, streets), daylight, mostly cloudy conditions.
Notes:
- Reported train-set sparse projected depth density is approximately 8.1%.
- This release is intended as training data; create your own deterministic train/val/test split if needed.
Limitations and Privacy
depth_fisheyeis sparse and can be noisy, especially on thin/far structures.- Depth overlays can show local drift due to sparsity, timing offsets, and calibration residuals.
- Disparity/depth are image-encoded and require proper scaling in loaders.
Anonymization in this release is best-effort:
- All published RGB images in this release were processed with automated face/plate blurring.
- Automated blur reduces identifiable content but may miss cases.
- Verify privacy compliance for your jurisdiction and use case before redistribution/deployment.
Links
- Paper: https://arxiv.org/abs/2605.24074
- WideDepth benchmark dataset: https://huggingface.co/datasets/IlyaInd/WideDepth
- WideDepth code repository: https://github.com/IlyaInd/WideDepth
License
This release uses Creative Commons Attribution-NonCommercial 4.0 International (cc-by-nc-4.0).
You must provide attribution and may not use the dataset for commercial purposes.
Citation
@article{indyk2026widedepth,
title={WideDepth: Millimeter-Accurate Benchmark for Fisheye Depth Estimation},
author={Indyk, Ilia and Penshin, Ignat and Sosin, Ivan and Monastyrny, Maxim and Valenkov, Aleksei and Makarov, Ilya},
journal={arXiv preprint arXiv:2605.24074},
year={2026}
}
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