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EPOS: Estimating 6D Pose of Objects with Symmetries

This repository provides the source code and trained models of the 6D object pose estimation method presented in:

Tomas Hodan, Daniel Barath, Jiri Matas
EPOS: Estimating 6D Pose of Objects with Symmetries
IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 2020
PDF | BIB | Video | Project website

Contents: Setup | Usage | Pre-trained models

1. Setup

The following sections will guide you in setting up the code on your machine. The code was developed and tested on Linux with GCC 8.3.0 (C++17 support is required). Please try to switch to this or a higher GCC version if you experience any compilation issues.

1.1 Python environment and dependencies

Create a conda environment and install dependencies:

conda create --name epos python=3.6.10
conda activate epos

conda install numpy=1.16.6
conda install tensorflow-gpu=1.12.0
conda install pyyaml=5.3.1
conda install opencv=3.4.2
conda install pandas=1.0.5
conda install tabulate=0.8.3
conda install imageio=2.9.0
conda install -c mjirik pypng=0.0.18
conda install -c conda-forge igl
conda install glog=0.4.0

To set environment variables, create file $CONDA_PREFIX/etc/conda/activate.d/env_vars.sh, copy into it the following content, and adjust variables REPO_PATH, STORE_PATH, and BOP_PATH:

#!/bin/sh

export REPO_PATH=/path/to/epos/repository  # Folder for the EPOS repository.
export STORE_PATH=/path/to/epos/store  # Folder for TFRecord files and trained models.
export BOP_PATH=/path/to/bop/datasets  # Folder for BOP datasets (bop.felk.cvut.cz/datasets).

export TF_DATA_PATH=$STORE_PATH/tf_data  # Folder with TFRecord files.
export TF_MODELS_PATH=$STORE_PATH/tf_models  # Folder with trained EPOS models.

export PYTHONPATH=$REPO_PATH:$PYTHONPATH
export PYTHONPATH=$REPO_PATH/external/bop_renderer/build:$PYTHONPATH
export PYTHONPATH=$REPO_PATH/external/bop_toolkit:$PYTHONPATH
export PYTHONPATH=$REPO_PATH/external/progressive-x/build:$PYTHONPATH
export PYTHONPATH=$REPO_PATH/external/slim:$PYTHONPATH

export LD_LIBRARY_PATH=$REPO_PATH/external/llvm/lib:$LD_LIBRARY_PATH

Re-activate the conda environment to load the environment variables:

conda activate epos

1.2 Cloning the repository

Download the code (including git submodules) to $REPO_PATH:

git clone --recurse-submodules https://github.com/thodan/epos.git $REPO_PATH/

1.3 BOP renderer

The BOP renderer is used to render the ground-truth label maps and can run off-screen on a server. The renderer depends on OSMesa and LLVM which can be installed as follows:

# The installation locations of OSMesa and LLVM:
export OSMESA_PREFIX=$REPO_PATH/external/osmesa
export LLVM_PREFIX=$REPO_PATH/external/llvm

mkdir $OSMESA_PREFIX
mkdir $LLVM_PREFIX
cd $REPO_PATH/external/bop_renderer/osmesa-install
mkdir build; cd build
bash ../osmesa-install.sh

Compile the renderer by:

cd $REPO_PATH/external/bop_renderer
mkdir build; cd build
export PYTHON_PREFIX=$CONDA_PREFIX
cmake .. -DCMAKE_BUILD_TYPE=Release
make -j8

1.4 Progressive-X

Progressive-X is used to estimate the 6D object poses from 2D-3D correspondences. Make sure your GCC version supports C++17 and compile Progressive-X by:

cd $REPO_PATH/external/progressive-x/build
cmake .. -DCMAKE_BUILD_TYPE=Release
make -j8

1.5 BOP datasets

For inference/evaluation on the existing BOP datasets, you need to download the base archives, 3D object models, and test images to folder $BOP_PATH. For training, you need to download also the training images. You can also use your own dataset prepared in the BOP format.

2. Usage

All of the following scripts should be run from folder $REPO_PATH/scripts.

2.1 Converting a dataset into a TFRecord file

First, create a list of images to include in the TFRecord file (examples are in create_example_list.py):

python create_example_list.py --dataset=<dataset> --split=<split> --split_type=<split_type>

A text file with the list is saved in $TF_DATA_PATH/example_lists.

Then, create the TFRecord file (examples are in create_tfrecord.py):

python create_tfrecord.py --dataset=<dataset> --split=<split> --split_type=<split_type> --examples_filename=<examples_filename> --add_gt=<add_gt> --shuffle=<shuffle> --rgb_format=<rgb_format>

The TFRecord file is saved in $TF_DATA_PATH. A sample TFRecord with YCB-V test images used in the BOP Challenge 2019/2020 can be downloaded from here.

2.2 Inference with a pre-trained model

Download and unpack a pre-trained model into folder $TF_MODELS_PATH.

Select a GPU and run the inference:

export CUDA_VISIBLE_DEVICES=0
python infer.py --model=<model_name>

where <model_name> is the name of the pre-trained model (e.g. ycbv-bop20-xc65-f64).

The estimated poses are saved in the format expected by the BOP Challenge 2019/2020 into folder $TF_MODELS_PATH/<model_name>/infer. To save also visualizations of the estimated poses into folder $TF_MODELS_PATH/<model_name>/vis, append the last command above with flag --vis.

2.3 Training your own model

First, create folder $TF_MODELS_PATH/<model_name>, where <model_name> is a name of the model to be trained. Inside this folder, create file params.yml specifying parameters of the model. An example model for the YCB-V dataset can be downloaded from here.

Model weights pretrained on ImageNet and COCO datasets, which can be used to initialize training of your models, can be downloaded from here here (extract the archive into $TF_MODELS_PATH/imagenet-coco-xc65).

Select a GPU and launch the training:

export CUDA_VISIBLE_DEVICES=0
python train.py --model=<model_name>

2.4 Checking the training input

You can check the training data by visualizing the augmented images and the corresponding ground-truth object labels, fragment labels, and 3D fragment coordinates:

python check_train_input.py --model=<model_name>

The visualizations are saved in folder $TF_MODELS_PATH/<model_name>/check_train_input.

3. Pre-trained models

Models evaluated in the CVPR 2020 paper (Xception-65 backbone, trained for 2M iterations):

Models evaluated in the BOP Challenge 2020 (Xception-65 backbone, trained only on the provided PBR images):