Check out our paper at the TIERS website. Access a sample dataset here.
Considering the accelerated development of Unmanned Aerial Vehicles (UAVs) applications in both industrial and research scenarios, there is an increasing need for localizing these aerial systems in non-urban environments, using GNSS-Free, vision-based methods. Our paper proposes a vision-based localization algorithm that utilizes deep features to compute geographical coordinates of a UAV flying in the wild. The method is based on matching salient features of RGB photographs captured by the drone camera and sections of a pre-built map consisting of georeferenced open-source satellite images. Experimental results prove that vision-based localization has comparable accuracy with traditional GNSS-based methods, which serve as ground truth. Compared to state-of-the-art Visual Odometry (VO) approaches, our solution is designed for long-distance, high-altitude UAV flights.
The main advantage of Wildnav is its capability of matching drone images (left) with georeferenced satellite images (right). The aim is for this to work for drones flying in non-urban areas, in environments with sparse features.
The drone image (left) can be taken from a very different perspective, compared to the matched satellite image(right)
The algorithm was tested on Ubuntu 20.04 with Python 3.10. Nevertheless, it should work with other versions as well.
- (Highly recommended) Create a new python3 virtual environment
Activate it
python3 -m venv env
source env/bin/activate
- Clone the repo
git clone [email protected]:TIERS/wildnav.git
- Install superglue dependencies:
cd wildnav git submodule update --init --recursive
- Install python dependencies
pip3 install -r requirements.txt
- Run the localization script (see below to add a dataset, but you can try with a few samples already in the repo)
cd src python3 wildnav.py
Before running the code, you need to have a dataset, reference images (map)
-
Add your drone photos to
assets/query
. Feel free to use our dataset from here. -
Add your satellite map images to
assets/map
together with a csv file containing geodata for the images (seeassets/map/map.csv
) -
Run python script to generate csv file containing photo metadata with GNSS coordinates
python3 extract_image_meta_exif.py
-
Run wildnav algorithm
python3 wildnav.py
- Runtime error due to incompatible version of
torch
installed Error message: "NVIDIA GeForce RTX 3070 with CUDA capability sm_86 is not compatible with the current PyTorch installation. The current PyTorch install supports CUDA capabilities sm_37 sm_50 sm_60 sm_70.If you want to use the NVIDIA GeForce RTX 3070 GPU with PyTorch."
Fix:
Uninstall current torch installation:
pip3 uninstall torch
Follow instructions on the official pytorch website to install the right version of torch for your system (it depends on your graphics card and CUDA version).
- No dedicated GPU available on your system.
Fix:
The algorithm can run, albeit much slower, on CPU. Simply change force_cpu
flag in src/superglue_utils.py
to True
.
NOTE: If you encounter any problems which are not listed here, please open a new issue in this repository. We will try to fix it as soon as possible.
Photographs used for experimental validation of the algorithm can be found here.
Satellite view of the flight zone (highlighted rectangle). The yellow pin is located at 60.403091° latitude and 22.461824° longitude
Total | Localized | MAE (m) | |
---|---|---|---|
Dataset 1 | 124 | 77 (62%) | 15.82 |
Dataset 2 | 78 | 44 (56%) | 26.58 |
Feel free to send me an email at [email protected] if you have any questions about the project.