This is a repo covering the following three papers. If you find the code useful, please cite the paper(s).
-
Generalizable Reconstruction (GenRe)
Learning to Reconstruct Shapes from Unseen Classes
Xiuming Zhang*, Zhoutong Zhang*, Chengkai Zhang, Joshua B. Tenenbaum, William T. Freeman, and Jiajun Wu
NeurIPS 2018 (Oral)
Paper | BibTeX | Project* indicates equal contribution.
-
ShapeHD
Learning Shape Priors for Single-View 3D Completion and Reconstruction
Jiajun Wu*, Chengkai Zhang*, Xiuming Zhang, Zhoutong Zhang, William T. Freeman, and Joshua B. Tenenbaum
ECCV 2018
Paper | BibTeX | Project -
MarrNet
MarrNet: 3D Shape Reconstruction via 2.5D Sketches
Jiajun Wu*, Yifan Wang*, Tianfan Xue, Xingyuan Sun, William T. Freeman, and Joshua B. Tenenbaum
NeurIPS 2017
Paper | BibTeX | Project
All code was built and tested on Ubuntu 16.04.5 LTS with Python 3.6, PyTorch 0.4.1, and CUDA 9.0. Versions for other packages can be found in environment.yml
.
-
Clone this repo with
# cd to the directory you want to work in git clone https://github.com/xiumingzhang/GenRe-ShapeHD.git cd GenRe-ShapeHD
The code below assumes you are at the repo root.
-
Create a conda environment named
shaperecon
with necessary dependencies specified inenvironment.yml
. In order to make sure trimesh is installed correctly, please runinstall_trimesh.sh
after setting up the conda environment.conda env create -f environment.yml ./install_trimesh.sh
The TensorFlow dependency in
environment.yml
is for using TensorBoard only. Remove it if you do not want to monitor your training with TensorBoard. -
The instructions below assume you have activated this environment and built the cuda extension with
source activate shaperecon ./build_toolbox.sh
Note that due to the deprecation of cffi from pytorch 1.0 and on, this only works for pytorch 0.4.1.
To download our trained GenRe and ShapeHD models (1 GB in total), run
wget http://genre.csail.mit.edu/downloads/genre_shapehd_models.tar -P downloads/models/
tar -xvf downloads/models/genre_shapehd_models.tar -C downloads/models/
- GenRe:
depth_pred_with_inpaint.pt
andfull_model.pt
- ShapeHD:
marrnet1_with_minmax.pt
andshapehd.pt
This repo comes with a few Pix3D images and ShapeNet renderings, located in downloads/data/test
, for testing purposes.
For training, we make available our RGB and 2.5D sketch renderings, paired with their corresponding 3D shapes, for ShapeNet cars, chairs, and airplanes, with each object captured in 20 random views. Note that this .tar
is 143 GB.
wget http://genre.csail.mit.edu/downloads/shapenet_cars_chairs_planes_20views.tar -P downloads/data/
mkdir downloads/data/shapenet/
tar -xvf downloads/data/shapenet_cars_chairs_planes_20views.tar -C downloads/data/shapenet/
We provide .sh
wrappers to perform testing for GenRe, ShapeHD, and MarrNet (without the reprojection consistency part).
See scripts/test_genre.sh
.
We updated our entire pipeline to support fully differentiable end-to-end finetuning. In our NeurIPS submission, the projection from depth images to spherical maps was not implemented in a differentiable way. As a result of both the pipeline and PyTorch version upgrades, the model performace is slightly different from what was reported in the original paper.
Below we tabulate the original vs. updated Chamfer distances (CD) across different Pix3D classes. The "Original" row is from Table 2 of the paper.
Chair | Bed | Bookcase | Desk | Sofa | Table | Wardrobe | |
---|---|---|---|---|---|---|---|
Updated | .094 | .117 | .104 | .110 | .086 | .114 | .106 |
Original | .093 | .113 | .101 | .109 | .083 | .116 | .109 |
See scripts/test_shapehd.sh
.
After ECCV, we upgraded our entire pipeline and re-trained ShapeHD with this new pipeline. The models released here are newly trained, producing quantative results slightly better than what was reported in the ECCV paper. If you use the Pix3D repo to evaluate the model released here, you will get an average CD of 0.122 for the 1,552 untruncated, unoccluded chair images (whose inplane rotation < 5°). The average CD on Pix3D chairs reported in the paper was 0.123.
See scripts/test_marrnet.sh
.
The architectures in this implementation of MarrNet are different from those presented in the original NeurIPS 2017 paper. For instance, the reprojection consistency is not implemented here. MarrNet-1 that predicts 2.5D sketches from RGB inputs is now a U-ResNet, different from its original architecture. That said, the idea remains the same: predicting 2.5D sketches as an intermediate step to the final 3D voxel predictions.
If you want to test with the original MarrNet, see the MarrNet repo for the pretrained models.
This repo allows you to train your own models from scratch, possibly with data different from our training data provided above. You can monitor your training with TensorBoard. For that, make sure to include --tensorboard
while running train.py
, and then run
python -m tensorboard.main --logdir="$logdir"/tensorboard
to visualize your losses.
Follow these steps to train the GenRe model.
- Train the depth estimator with
scripts/train_marrnet1.sh
- Train the spherical inpainting network with
scripts/train_inpaint.sh
- Train the full model with
scripts/train_full_genre.sh
Follow these steps to train the ShapeHD model.
- Train the 2.5D sketch estimator with
scripts/train_marrnet1.sh
- Train the 2.5D-to-3D network with
scripts/train_marrnet2.sh
- Train a 3D-GAN with
scripts/train_wgangp.sh
- Finetune the 2.5D-to-3D network with perceptual losses provided by the discriminator of the 3D-GAN, using
scripts/finetune_shapehd.sh
Follow these steps to train the MarrNet model, excluding the reprojection consistency.
- Train the 2.5D sketch estimator with
scripts/train_marrnet1.sh
- Train the 2.5D-to-3D network with
scripts/train_marrnet2.sh
- Finetune the 2.5D-to-3D network with
scripts/finetune_marrnet.sh
Please open an issue if you encounter any problem.
- Dec. 28, 2018: Initial Release