We introduce the new task of 3D object localization in RGB-D scans using natural language descriptions. As input, we assume a point cloud of a scanned 3D scene along with a free-form description of a specified target object. To address this task, we propose ScanRefer, where the core idea is to learn a fused descriptor from 3D object proposals and encoded sentence embeddings. This learned descriptor then correlates the language expressions with the underlying geometric features of the 3D scan and facilitates the regression of the 3D bounding box of the target object. In order to train and benchmark our method, we introduce a new ScanRefer dataset, containing 51,583 descriptions of 11,046 objects from 800 ScanNet scenes. ScanRefer is the first large-scale effort to perform object localization via natural language expression directly in 3D.
Please also check out the project website here.
For additional detail, please see the ScanRefer paper:
"ScanRefer: 3D Object Localization in RGB-D Scans using Natural Language"
by Dave Zhenyu Chen, Angel X. Chang and Matthias Nießner
from Technical University of Munich and Simon Fraser University.
We provide the ScanRefer Benchmark Challenge for benchmarking your model automatically on the hidden test set! Learn more at our benchmark challenge website.
After finishing training the model, please download the benchmark data and put the unzipped ScanRefer_filtered_test.json
under data/
. Then, you can run the following script the generate predictions:
python scripts/predict.py --folder <folder_name> --use_color
Note that the flags must match the ones set before training. The training information is stored in outputs/<folder_name>/info.json
. The generated predictions are stored in outputs/<folder_name>/pred.json
.
For submitting the predictions, please compress the pred.json
as a .zip or .7z file and follow the instructions to upload your results.
If you would like to access to the ScanRefer dataset, please fill out this form. Once your request is accepted, you will receive an email with the download link.
Note: In addition to language annotations in ScanRefer dataset, you also need to access the original ScanNet dataset. Please refer to the ScanNet Instructions for more details.
Download the dataset by simply executing the wget command:
wget <download_link>
"scene_id": [ScanNet scene id, e.g. "scene0000_00"],
"object_id": [ScanNet object id (corresponds to "objectId" in ScanNet aggregation file), e.g. "34"],
"object_name": [ScanNet object name (corresponds to "label" in ScanNet aggregation file), e.g. "coffee_table"],
"ann_id": [description id, e.g. "1"],
"description": [...],
"token": [a list of tokens from the tokenized description]
The code is tested on Ubuntu 16.04 LTS & 18.04 LTS with PyTorch 1.2.0 CUDA 10.0 installed. There are some issues with the newer version (>=1.3.0) of PyTorch. You might want to make sure you have installed the correct version. Otherwise, please execute the following command to install PyTorch:
The code is now compatiable with PyTorch 1.6! Please execute the following command to install PyTorch
conda install pytorch==1.6.0 torchvision==0.7.0 cudatoolkit=10.2 -c pytorch
Install the necessary packages listed out in requirements.txt
:
pip install -r requirements.txt
After all packages are properly installed, please run the following commands to compile the CUDA modules for the PointNet++ backbone:
cd lib/pointnet2
python setup.py install
Before moving on to the next step, please don't forget to set the project root path to the CONF.PATH.BASE
in lib/config.py
.
- Download the ScanRefer dataset and unzip it under
data/
. - Download the preprocessed GLoVE embeddings (~990MB) and put them under
data/
. - Download the ScanNetV2 dataset and put (or link)
scans/
under (or to)data/scannet/scans/
(Please follow the ScanNet Instructions for downloading the ScanNet dataset).
After this step, there should be folders containing the ScanNet scene data under the
data/scannet/scans/
with names likescene0000_00
- Pre-process ScanNet data. A folder named
scannet_data/
will be generated underdata/scannet/
after running the following command. Roughly 3.8GB free space is needed for this step:
cd data/scannet/
python batch_load_scannet_data.py
After this step, you can check if the processed scene data is valid by running:
python visualize.py --scene_id scene0000_00
-
(Optional) Pre-process the multiview features from ENet.
a. Download the ENet pretrained weights (1.4MB) and put it under
data/
b. Download and decompress the extracted ScanNet frames (~13GB).
c. Change the data paths in
config.py
marked with TODO accordingly.d. Extract the ENet features:
python script/compute_multiview_features.py
e. Project ENet features from ScanNet frames to point clouds; you need ~36GB to store the generated HDF5 database:
python script/project_multiview_features.py --maxpool
You can check if the projections make sense by projecting the semantic labels from image to the target point cloud by:
python script/project_multiview_labels.py --scene_id scene0000_00 --maxpool
To train the ScanRefer model with RGB values:
python scripts/train.py --use_color
For more training options (like using preprocessed multiview features), please run scripts/train.py -h
.
To evaluate the trained ScanRefer models, please find the folder under outputs/
with the current timestamp and run:
python scripts/eval.py --folder <folder_name> --reference --use_color --no_nms --force --repeat 5
Note that the flags must match the ones set before training. The training information is stored in outputs/<folder_name>/info.json
To predict the localization results predicted by the trained ScanRefer model in a specific scene, please find the corresponding folder under outputs/
with the current timestamp and run:
python scripts/visualize.py --folder <folder_name> --scene_id <scene_id> --use_color
Note that the flags must match the ones set before training. The training information is stored in outputs/<folder_name>/info.json
. The output .ply
files will be stored under outputs/<folder_name>/vis/<scene_id>/
For reproducing our results in the paper, we provide the following training commands and the corresponding pre-trained models:
Name | Command | Unique | Multiple | Overall | Weights | |||
---|---|---|---|---|---|---|---|---|
Acc@0.25IoU | Acc@0.5IoU | Acc@0.25IoU | Acc@0.5IoU | Acc@0.25IoU | Acc@0.5IoU | |||
xyz | python script/train.py --no_lang_cls |
63.98 | 43.57 | 29.28 | 18.99 | 36.01 | 23.76 | weights |
xyz+rgb | python script/train.py --use_color --no_lang_cls |
63.24 | 41.78 | 30.06 | 19.23 | 36.5 | 23.61 | weights |
xyz+rgb+normals | python script/train.py --use_color --use_normal --no_lang_cls |
64.63 | 43.65 | 31.89 | 20.77 | 38.24 | 25.21 | weights |
xyz+multiview | python script/train.py --use_multiview --no_lang_cls |
77.2 | 52.69 | 32.08 | 19.86 | 40.84 | 26.23 | weights |
xyz+multiview+normals | python script/train.py --use_multiview --use_normal --no_lang_cls |
78.22 | 52.38 | 33.61 | 20.77 | 42.27 | 26.9 | weights |
xyz+lobjcls | python script/train.py |
64.31 | 44.04 | 30.77 | 19.44 | 37.28 | 24.22 | weights |
xyz+rgb+lobjcls | python script/train.py --use_color |
65.00 | 43.31 | 30.63 | 19.75 | 37.30 | 24.32 | weights |
xyz+rgb+normals+lobjcls | python script/train.py --use_color --use_normal |
67.64 | 46.19 | 32.06 | 21.26 | 38.97 | 26.10 | weights |
xyz+multiview+lobjcls | python script/train.py --use_multiview |
76.00 | 50.40 | 34.05 | 20.73 | 42.19 | 26.50 | weights |
xyz+multiview+normals+lobjcls | python script/train.py --use_multiview --use_normal |
76.33 | 53.51 | 32.73 | 21.11 | 41.19 | 27.40 | weights |
If you would like to try out the pre-trained models, please download the model weights and extract the folder to outputs/
. Note that the results are higher than before because of a few iterations of code refactoring and bug fixing.
11/11/2020: Updated paper with the improved results due to bug fixing.
11/05/2020: Released pre-trained weights.
08/08/2020: Fixed the issue with lib/box_util.py
.
08/03/2020: Fixed the issue with lib/solver.py
and script/eval.py
.
06/16/2020: Fixed the issue with multiview features.
01/31/2020: Fixed the issue with bad tokens.
01/21/2020: Released the ScanRefer dataset.
If you use the ScanRefer data or code in your work, please kindly cite our work and the original ScanNet paper:
@article{chen2020scanrefer,
title={ScanRefer: 3D Object Localization in RGB-D Scans using Natural Language},
author={Chen, Dave Zhenyu and Chang, Angel X and Nie{\ss}ner, Matthias},
journal={16th European Conference on Computer Vision (ECCV)},
year={2020}
}
@inproceedings{dai2017scannet,
title={Scannet: Richly-annotated 3d reconstructions of indoor scenes},
author={Dai, Angela and Chang, Angel X and Savva, Manolis and Halber, Maciej and Funkhouser, Thomas and Nie{\ss}ner, Matthias},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
pages={5828--5839},
year={2017}
}
We would like to thank facebookresearch/votenet for the 3D object detection codebase and erikwijmans/Pointnet2_PyTorch for the CUDA accelerated PointNet++ implementation.
ScanRefer is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported License.
Copyright (c) 2020 Dave Zhenyu Chen, Angel X. Chang, Matthias Nießner