AirSim is a simulator for drones, cars and more built on Unreal Engine. It is open-source, cross platform and supports hardware-in-loop with popular flight controllers such as PX4 for physically and visually realistic simulations. It is developed as an Unreal plugin that can simply be dropped in to any Unreal environment you want.
Our goal is to develop AirSim as a platform for AI research to experiment with deep learning, computer vision and reinforcement learning algorithms for autonomous vehicles. For this purpose, AirSim also exposes APIs to retrieve data and control vehicles in a platform independent way.
Check out the quick 1.5 minute demo
Drones in AirSim
Cars in AirSim
- AirSim is now full featured for multiple vehicles!
- AirSim 1.2 is released! This version has breaking changes in APIs and settings.json. Please see API Upgrade and Settings Upgrade docs.
- We have upgraded to Unreal Engine 4.18 and Visual Studio 2017 (see upgrade instructions)
By default AirSim will prompt you for choosing Car or Multirotor mode. You can use SimMode setting to specify the default vehicle or the new ComputerVision mode.
If you have remote control (RC) as shown below, you can manually control the drone in the simulator. For cars, you can use arrow keys to drive manually.
AirSim exposes APIs so you can interact with vehicle in the simulation programmatically. You can use these APIs to retrieve images, get state, control the vehicle and so on. The APIs are exposed through RPC and accessible via variety of languages including C++, Python, C# and Java.
These APIs are also available as a part of a separate independent cross-platform library so you can deploy them on an companion computer on your vehicle. This way you can write and test your code in simulator and later execute it on the real vehicles. Transfer learning and related research is one of our focus areas.
There are two ways you can generate training data from AirSim for deep learning. The easiest way is to simply press the record button on the lower right corner. This will start writing pose and images for each frame. The data logging code is pretty simple and you can modify it to your heart's desire.
A better way to generate training data exactly the way you want is by accessing the APIs. This allows you to be in full control of how, what, where and when you want to log data.
Yet another way to use AirSim is so-called "Computer Vision" mode. In this mode, you don't have vehicles or physics. You can use keyboard to move around the scene or use APIs to position available cameras in any arbitrary pose and collect images such as depth, disparity, surface normals or object segmentation.
- Video - Setting up AirSim with Pixhawk Tutorial by Chris Lovett
- Video - Using AirSim with Pixhawk Tutorial by Chris Lovett
- Video - Using off-the-self environments with AirSim by Jim Piavis
- Reinforcement Learning with AirSim by Ashish Kapoor
- The Autonomous Driving Cookbook by Microsoft Deep Learning and Robotics Garage Chapter
- Using TensorFlow for simple collision avoidance by Simon Levy and WLU team
More technical details are available in AirSim paper (FSR 2017 Conference). Please cite this as:
@inproceedings{airsim2017fsr,
author = {Shital Shah and Debadeepta Dey and Chris Lovett and Ashish Kapoor},
title = {AirSim: High-Fidelity Visual and Physical Simulation for Autonomous Vehicles},
year = {2017},
booktitle = {Field and Service Robotics},
eprint = {arXiv:1705.05065},
url = {https://arxiv.org/abs/1705.05065}
}
Please take a look at open issues if you are looking for areas to contribute to.
We are maintaining a list of a few projects, people and groups that we are aware of. If you would like to be featured in this list please add a request here.
Join the AirSim group at Facebook to stay up to date or ask any questions.
If you run into problems, check the FAQ and feel free to post issues on the AirSim github.
This project is released under MIT License. Please review License file for more details.