Minghan Qin*, Wanhua Li*†, Jiawei Zhou*, Haoqian Wang†, Hanspeter Pfister
(* indicates equal contribution, † means Co-corresponding author)
| Webpage | Full Paper | Video |
| Preprocessed Dataset | BaiduWangpan | GoogleDrive |
| Pre-trained Models | BaiduWangpan | GoogleDrive |
| Datasets |
This repository contains the official authors implementation associated with the paper "LangSplat: 3D Language Gaussian Splatting" (CVPR 2024), which can be found here. We further provide the preprocessed datasets 3D-OVS with language feature, as well as pre-trained models.
The repository contains submodules, thus please check it out with
# SSH
git clone [email protected]:minghanqin/LangSplat.git --recursive
or
# HTTPS
git clone https://github.com/minghanqin/LangSplat.git --recursive
The codebase has 3 main components:
- A PyTorch-based optimizer to produce a LangSplat model from SfM datasets with language feature inputs to
- A scene-wise language autoencode to alleviate substantial memory demands imposed by explicit modeling.
- A script to help you turn your own images into optimization-ready SfM data sets with language feature
The components have been tested on Ubuntu Linux 18.04. Instructions for setting up and running each of them are found in the sections below.
In the experiments section of our paper, we primarily utilized two datasets: the 3D-OVS dataset and the LERF dataset.
The 3D-OVS dataset is accessible for download via the following link: Download 3D-OVS Dataset .
For the LERF dataset, we have expanded upon its existing collection and also provided the corresponding COLMAP data. These resources can be accessed through this link: Download Expanded LERF Dataset and COLMAP Data.
The optimizer uses PyTorch and CUDA extensions in a Python environment to produce trained models.
- CUDA-ready GPU with Compute Capability 7.0
- 24 GB VRAM (to train to paper evaluation quality)
- Conda (recommended for easy setup)
- C Compiler for PyTorch extensions (we used VS Code)
- CUDA SDK 11 for PyTorch extensions (we used 11.8)
- C Compiler and CUDA SDK must be compatible
Our default, provided install method is based on Conda package and environment management:
conda env create --file environment.yml
conda activate langsplat
Download the pretrained model to output/
, then simply use
python render.py -m output/$CASENAME --include_feature
Firstly, put your images into the data dir.
<dataset_name>
|---input
| |---<image 0>
| |---<image 1>
| |---...
Secondly, you need to acquire the following dataset format and a pre-trained RGB model follow the 3dgs repository.
<dataset_name>
|---images
| |---<image 0>
| |---<image 1>
| |---...
|---input
| |---<image 0>
| |---<image 1>
| |---...
|---output
| |---<dataset_name>
| | |---point_cloud/iteration_30000/point_cloud.ply
| | |---cameras.json
| | |---cfg_args
| | |---chkpnt30000.pth
| | |---input.ply
|---sparse
|---0
|---cameras.bin
|---images.bin
|---points3D.bin
Please install segment-anything-langsplat and download the checkpoints of SAM from here to ckpts/
.
Follow the process.sh
and train LangSplat on your own scenes.
-
Step 1: Generate Language Feature of the Scenes. Put the image data into the "input" directory under the
<dataset_name>/
, then run the following code.python preprocess.py --dataset_path $dataset_path
-
Step 2: Train the Autoencoder and get the lower-dims Feature.
# train the autoencoder cd autoencoder python train.py --dataset_name $dataset_path --encoder_dims 256 128 64 32 3 --decoder_dims 16 32 64 128 256 256 512 --lr 0.0007 --output ae_ckpt # get the 3-dims language feature of the scene python test.py --dataset_name $dataset_path --output
Our model expect the following dataset structure in the source path location:
<dataset_name> |---images | |---<image 0> | |---<image 1> | |---... |---language_feature | |---00_f.npy | |---00_s.npy | |---... |---language_feature_dim3 | |---00_f.npy | |---00_s.npy | |---... |---output | |---<dataset_name> | | |---point_cloud/iteration_30000/point_cloud.ply | | |---cameras.json | | |---cfg_args | | |---chkpnt30000.pth | | |---input.ply |---sparse |---0 |---cameras.bin |---images.bin |---points3D.bin
-
Step 3: Train the LangSplat.
python train.py -s dataset_path -m output/${casename} --start_checkpoint $dataset_path/output/$casename/chkpnt30000.pth --feature_level ${level}
-
Step 4: Render the LangSplat.
python render.py -s dataset_path -m output/${casename} --feature_level ${level}
-
Step 5: Eval. First, we generate the 3-dim language feature map through Step 4. Subsequently, the decoder elevates the features from 3 dimensions to 512 dimensions. For further operations and detailed explanations, please refer to the supplementary materials.
-
3D Object Localization on LERF and 3D Semantic Segmentation on LERF. Our eval code is based on LERF and NerfStudio, thanks for these impressive open-source projects!
-
Please download the lerf_ovs first.
-
Set the
gt_folder
as the path to lerf_ovs/label. -
Make sure finish the Step 4 before you run the eval code.
-
cd eval sh eval.sh
-
- release the code of the optimizer
- release the code of the autoencoder
- release the code of the segment-anything-langsplat
- update the arxiv link
- release the preprocessed dataset and the pretrained model
- release more preprocessed dataset and the pretrained model (coming soon)
- release the code of the eval
This project is still under development. Please feel free to raise issues or submit pull requests to contribute to our codebase.