This is the capstone project for Udacity's Self Driving Car Nanodegree. This code is aimed to run in an actual physical self-drive vehicle. It is the final project of the nanodegree and solved in team work.
This repository is maintained by the following:
- George Terzakis: [email protected]
- Martin Herzog: [email protected]
- Yuda Liu: [email protected]
- Atul Acharya: [email protected]
- Yoni Azuelos: [email protected]
The following video shows the code in action:
- Clone the project repository
git clone https://github.com/herzogmartin/CarND-Capstone.git
- Clone the team's submodule
cd CarND-Capstone
git submodule init
git submodule update
- Make sure that the submodule contains the latest updates
git pull origin master
- Install python dependencies
pip install -r requirements.txt
- Make and run styx
cd ros
catkin_make
source devel/setup.sh
roslaunch launch/styx.launch
- Run the simulator
The team's specification can be found here.
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Be sure that your workstation is running Ubuntu 16.04 Xenial Xerus or Ubuntu 14.04 Trusty Tahir. Ubuntu downloads can be found here.
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If using a Virtual Machine to install Ubuntu, use the following configuration as minimum:
- 2 CPU
- 2 GB system memory
- 25 GB of free hard drive space
The Udacity provided virtual machine has ROS and Dataspeed DBW already installed, so you can skip the next two steps if you are using this.
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Follow these instructions to install ROS
- ROS Kinetic if you have Ubuntu 16.04.
- ROS Indigo if you have Ubuntu 14.04.
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- Use this option to install the SDK on a workstation that already has ROS installed: One Line SDK Install (binary)
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Download the Udacity Simulator.
Build the docker container
docker build . -t capstone
Run the docker file
docker run -p 127.0.0.1:4567:4567 -v $PWD:/capstone -v /tmp/log:/root/.ros/ --rm -it capstone
- Download training bag that was recorded on the Udacity self-driving car (a bag demonstraing the correct predictions in autonomous mode can be found here)
- Unzip the file
unzip traffic_light_bag_files.zip
- Play the bag file
rosbag play -l traffic_light_bag_files/loop_with_traffic_light.bag
- Launch your project in site mode
cd CarND-Capstone/ros
roslaunch launch/site.launch
- Confirm that traffic light detection works on real life images