license: mit
task_categories:
- image-to-3d
- depth-estimation
- image-to-image
tags:
- 3d-reconstruction
- multi-view
- nerf
- 3d-gaussian-splatting
- novel-view-synthesis
- benchmark
- colmap
- point-cloud
- depth-map
- raw-image
- computational-photography
pretty_name: >-
RealX3D: A Physically-Degraded 3D Benchmark for Multi-view Visual Restoration
and Reconstruction
size_categories:
- 1K<n<10K
RealX3D is a real-world benchmark dataset for multi-view 3D reconstruction under challenging capture conditions. It provides multi-view RGB images (both processed JPEG and Sony RAW), COLMAP sparse reconstructions, and high-precision 3D ground-truth geometry (point clouds, meshes, and rendered depth maps) across a diverse set of scenes and degradation types.
| π Low Light | π¨ Smoke |
β¨ Key Features
- 9 real-world degradation conditions: defocus (mild/strong), motion blur (mild/strong), low light, smoke, reflection, dynamic objects, and varying exposure.
- Full-resolution (~7000Γ4700) and quarter-resolution (~1800Γ1200) JPEG images with COLMAP reconstructions.
- Sony RAW (ARW) sensor data with complete EXIF metadata for 7 conditions.
- Per-frame metric depth maps rendered from laser-scanned meshes.
- Camera poses and intrinsics in both COLMAP binary format and NeRF-compatible
transforms.json.
π Dataset Structure
RealX3D/
βββ data/ # Full-resolution JPEG images + COLMAP reconstructions
βββ data_4/ # Quarter-resolution JPEG images + COLMAP reconstructions
βββ baseline_results/ # Baseline methods rendering results on data_4 for direct download
βββ data_arw/ # Sony RAW (ARW) sensor data
βββ pointclouds/ # 3D point clouds, meshes, and metric depth maps
βββ scripts/ # Utilities scripts
π Release Status
data/β Full-resolution JPEG images + COLMAPdata_4/β Quarter-resolution JPEG images + COLMAPbaseline_results/- Baseline rendering resultsdata_arw/β Sony RAW (ARW) sensor datapointclouds/β 3D ground-truth geometry (point clouds, meshes, depth maps)
π§οΈ Capture Conditions
| Condition | Description |
|---|---|
defocus_mild |
Mild defocus blur |
defocus_strong |
Strong defocus blur |
motion_mild |
Mild motion blur |
motion_strong |
Strong motion blur |
dynamic |
Dynamic objects in the scene |
reflection |
Specular reflections |
lowlight |
Low-light environment |
smoke |
Smoke / particulate occlusion |
varyexp |
Varying exposure |
ποΈ Scenes
Akikaze, BlueHawaii, Chocolate, Cupcake, GearWorks, Hinoki, Koharu, Laboratory, Limon, MilkCookie, Natsume, Popcorn, Sculpture, Shirohana, Ujikintoki
πΈ data/ β Full-Resolution JPEG Images
Full-resolution JPEG images and corresponding COLMAP sparse reconstructions, organized by condition β scene.
Per-Scene Directory Layout
data/{condition}/{scene}/
βββ train/ # Training images (~23β31 frames)
β βββ 0001.JPG
β βββ ...
βββ val/ # Validation images (~23β31 frames)
β βββ ...
βββ test/ # Test images (~4β6 frames)
β βββ ...
βββ transforms_train.json # Camera parameters & poses (training split)
βββ transforms_val.json # Camera parameters & poses (validation split)
βββ transforms_test.json # Camera parameters & poses (test split)
βββ point3d.ply # COLMAP sparse 3D point cloud
βββ colmap2world.txt # 4Γ4 COLMAP-to-world coordinate transform
βββ sparse/0/ # COLMAP sparse reconstruction
β βββ cameras.bin / cameras.txt
β βββ images.bin / images.txt
β βββ points3D.bin / points3D.txt
βββ distorted/sparse/0/ # Pre-undistortion COLMAP reconstruction
βββ stereo/ # MVS configuration files
π transforms.json Format
Each transforms_*.json file contains shared camera intrinsics and per-frame extrinsics following Blender Dataset format, for example:
{
"camera_angle_x": 1.295,
"camera_angle_y": 0.899,
"fl_x": 4778.31,
"fl_y": 4928.04,
"cx": 3649.23,
"cy": 2343.41,
"w": 7229.0,
"h": 4754.0,
"k1": 0, "k2": 0, "k3": 0, "k4": 0,
"p1": 0, "p2": 0,
"is_fisheye": false,
"aabb_scale": 2,
"frames": [
{
"file_path": "train/0001.JPG",
"sharpness": 25.72,
"transform_matrix": [[...], [...], [...], [...]]
}
]
}
All distortion coefficients are zero (images are pre-undistorted).
πΌοΈ Image Specifications
- Format: JPEG
- Resolution: ~7000 Γ 4700 pixels (varies slightly across scenes)
- Camera: Sony ILCE-7M4 (Ξ±7 IV)
- Camera Model: PINHOLE (pre-undistorted)
πΈ data_4/ β Quarter-Resolution JPEG Images (Used for 2026 NTIRE-3DRR Challenge)
Identical directory structure to data/, with images downsampled to 1/4 resolution (~1800 Γ 1200 pixels). Camera intrinsics (fl_x, fl_y, cx, cy, w, h) in the transforms.json files are adjusted accordingly. All 9 capture conditions and their scenes are included.
π· data_arw/ β Sony RAW Data
Sony ARW (TIFF-wrapped RAW) sensor data preserving full EXIF metadata.
Differences from data/
- Image format:
.ARW(~33β35 MB per frame) - 7 conditions available:
defocus_mild,defocus_strong,dynamic,lowlight,reflection,smoke,varyexp(motion blur conditions are excluded)
Per-Scene Directory Layout
data_arw/{condition}/{scene}/
βββ train/ # ARW raw images
βββ val/
βββ test/
βββ sparse/0/ # COLMAP sparse reconstruction
π pointclouds/ β 3D Ground Truth
High-precision 3D geometry ground truth, organized directly by scene name (geometry is shared across capture conditions for the same scene).
Per-Scene Directory Layout
pointclouds/{scene}/
βββ cull_pointcloud.ply # Culled point cloud (view-frustum trimmed)
βββ cull_mesh.ply # Culled triangle mesh
βββ colmap2world.npy # 4Γ4 COLMAP-to-world transform (NumPy format)
βββ depth/ # 16-bit Depth maps rendered from the mesh
βββ 0001.png
βββ 0002.png
βββ ...
The colmap2world.npy matrix aligns COLMAP reconstructions to the world coordinate system of the ground-truth geometry. The same transform is also stored as colmap2world.txt in the corresponding data/ directories.
π Citation
@article{liu2025realx3d,
title = {RealX3D: A Physically-Degraded 3D Benchmark for Multi-view
Visual Restoration and Reconstruction},
author = {Liu, Shuhong and Bao, Chenyu and Cui, Ziteng and Liu, Yun
and Chu, Xuangeng and Gu, Lin and Conde, Marcos V and
Umagami, Ryo and Hashimoto, Tomohiro and Hu, Zijian and others},
journal = {arXiv preprint arXiv:2512.23437},
year = {2025}
}
π License
This dataset is released under the MIT License.