OpenSfM
Overview
OpenSfM is a Structure from Motion library written in Python on top of OpenCV. The library serves as a processing pipeline for reconstructing camera poses and 3D scenes from multiple images. It consists of basic modules for Structure from Motion (feature detection/matching, minimal solvers) with a focus on building a robust and scalable reconstruction pipeline. It also integrates external sensor (e.g. GPS, accelerometer) measurements for geographical alignment and robustness. A JavaScript viewer is provided to preview the models and debug the pipeline.
Checkout this blog post with more demos
Dependencies
- OpenCV
- OpenGV
- Ceres Solver
- Boost Python
- NumPy, SciPy, Networkx, PyYAML, exifread
Installing dependencies on MacOSX
Install OpenCV using
brew tap homebrew/science
brew install opencv
brew install homebrew/science/ceres-solver
brew install boost-python
And install OpenGV using
brew install eigen
git clone https://github.com/paulinus/opengv.git
cd opengv
mkdir build
cd build
cmake .. -DBUILD_TESTS=OFF -DBUILD_PYTHON=ON
make install
Be sure to update your PYTHONPATH
to include /usr/local/lib/python2.7/site-packages
where OpenCV and OpenGV have been installed. For example:
export PYTHONPATH=/usr/local/lib/python2.7/site-packages:$PYTHONPATH
Installing dependencies on Ubuntu
See this Dockerfile for the commands to install all dependencies on Ubuntu 14.04. The steps are
- Install OpenCV, Boost Python, NumPy, SciPy using apt-get
- Install python requirements using pip
- Clone, build and install OpenGV following the receipt in the Dockerfile
- Build and Install the Ceres solver from its source using the
-fPIC
compilation flag.
Install note
When running OpenSfM on top of OpenCV 3.0 the OpenCV Contrib modules are required for extracting SIFT or SURF features.
Building
sudo pip install virtualenv
virtualenv env
source env/bin/activate
pip install -r requirements.txt
python setup.py build
Running
An example dataset is available at data/berlin
.
- Put some images in
data/DATASET_NAME/images/
- Put config.yaml in
data/DATASET_NAME/config.yaml
- Go to the root of the project and run
bin/opensfm_run_all data/DATASET_NAME
- Start an http server from the root with
python -m SimpleHTTPServer
- Browse
http://localhost:8000/viewer/reconstruction.html#file=/data/DATASET_NAME/reconstruction.meshed.json
.
Things you can do from there:
- Use datasets with more images
- Click twice on an image to see it. Then use arrows to move between images.
Thanks to sponsors
- Thank you Jetbrains for supporting the project with free licenses for IntelliJ Ultimate. Contact peter at mapillary dot com if you are contributor and need one. Apply your own project here