license: mit
pretty_name: SynLiDAR
tags:
- lidar
- synthetic
- point-cloud
- autonomous-driving
- semantic-segmentation
- 3D-segmentation
SynLiDAR Dataset
Overview
SynLiDAR is a synthetic LiDAR dataset designed for autonomous driving research.
It contains high-quality simulated point cloud sequences and corresponding semantic annotations.
The dataset provides two variants:
- FullDataset — complete version for large-scale experiments (branch:
full) - SubDataset — smaller version suitable for prototyping, debugging, and benchmarking (branch:
sub)
This HuggingFace repository uses branches to separate large data files and metadata:
main→ metadata, scripts, annotationsfull→ FullDatasetsub→ SubDataset
Dataset Structure
SynLiDAR/
├── FullDataset/
│ ├── sequences/
│ │ ├── 00.zip
│ │ ├── …
│ │ └── 12.zip
│ └── readme.txt
│
├── SubDataset/
│ ├── sequences/
│ │ ├── 00.zip
│ │ ├── …
│ │ └── 12.zip
│ └── readme.txt
│
├── annotations.yaml
├── read_data.py
└── README.md
⚠️ Some large sequences have been split into chunks (e.g.
06_part01.zip,06_part02.zip, …) to avoid exceeding file size limits. These parts are functionally equivalent to the original06.zip.
Contents
sequences/*.zip— Each zip contains LiDAR frames from a single drive sequenceannotations.yaml— Semantic categories and label mappingsread_data.py— Example Python loader to read.binpoint cloud filesreadme.txt— Original dataset notes
🔽 How to Download the Dataset
Install huggingface_hub
pip install huggingface_hub
Download Full Dataset (branch: full)
from huggingface_hub import snapshot_download
path = snapshot_download(
repo_id="AR-X/SynLiDAR",
repo_type="dataset",
revision="full",
local_dir="./SynLiDAR", # specify your desired path
)
print(path)
Download Sub Dataset (branch: sub)
from huggingface_hub import snapshot_download
path = snapshot_download(
repo_id="AR-X/SynLiDAR",
repo_type="dataset",
revision="sub",
local_dir="./SynLiDAR", # specify your desired path
)
print(path)
🔧 Merging Split ZIP Files
Some sequences in the full branch were too large (>50GB) and are stored as multiple parts:
Example:
06_part01.zip
06_part02.zip
...
06_part11.zip
These parts correspond to a single original archive. You can merge them into a single folder using Python:
from pathlib import Path
sequence_dir = Path("SynLiDAR/FullDataset/sequences")
# find bases that have part files
bases = sorted({p.stem.split("_part")[0] for p in sequence_dir.glob("*_part*.zip")})
for base in bases:
parts = sorted(sequence_dir.glob(f"{base}_part*.zip"))
output_zip = sequence_dir / f"{base}.zip"
print(f"[{base}] merging {len(parts)} parts -> {output_zip}")
with open(output_zip, "wb") as out:
for p in parts:
with open(p, "rb") as f:
out.write(f.read())
print("All sequences merged.")
Citation
@inproceedings{xiao2022transfer,
title={Transfer learning from synthetic to real lidar point cloud for semantic segmentation},
author={Xiao, Aoran and Huang, Jiaxing and Guan, Dayan and Zhan, Fangneng and Lu, Shijian},
booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
volume={36},
number={3},
pages={2795--2803},
year={2022}
}
⚠️ Disclaimer: This dataset is intended for research and educational usage. Make sure to respect local regulations when training or deploying autonomous driving systems.