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Formalisation and Verification of Autonomous Vehicles in Simulators

Abstract

Table of Contents

Signal Temporal Logic Library

To see how to use the library, please see STL/README.md.

Also, playing around with STL was a good staring point for implementing the STL Library.

Running the Examples

To set up the environment, first you need to install carla. Then, you need to download the submodules (ScenarioRunner and Leaderboard) using the following command:

git submodule update --init

Finally, some environment variables need to be set. For linux, use:

export CARLA_ROOT=/path/to/carla
export SCENARIO_RUNNER_ROOT=/path/to/scenario_runner
export LEADERBOARD_ROOT=/path/to/leaderboard
export PYTHONPATH=${CARLA_ROOT}/PythonAPI/carla/dist/carla-0.9.13-py3.6-linux-x86_64.egg:${CARLA_ROOT}/PythonAPI/carla:${SCENARIO_RUNNER_ROOT}
export CHALLENGE_TRACK_CODENAME=SENSORS

For windows, use:

set CARLA_ROOT=C:\path\to\carla
set SCENARIO_RUNNER_ROOT=C:\path\to\scenario_runner
set LEADERBOARD_ROOT=C:\path\to\leaderboard
set PYTHONPATH=${CARLA_ROOT}\PythonAPI\carla\dist\carla-0.9.13-py3.6-win-amd64.egg;${CARLA_ROOT}\PythonAPI\carla;${SCENARIO_RUNNER_ROOT}
set CHALLENGE_TRACK_CODENAME=SENSORS

CARLA Examples

To be able to run the examples, you need to have a running CARLA server. To start the server, run the following command: For linux, use:

./CarlaUE4.sh

For windows, use:

CarlaUE4.exe

CARLA Connection was implemented for testing how the API connects to the server. Also, the map is being changed to Town01 and the available maps are printed out.

CARLA Weather was implemented for changing the weather conditions using the API.

CARLA Blueprint was implemented for spawning a vehicle and a rgb camera sensor, where the camera saves the images to a folder. The vehicle only records 10 frames after 5 seconds of initialising the world.

CARLA Replay Scenario was implemented to replay a scenario and to see what kind of signals can be collected. While replaying a camera is attached to the ego vehicle, and it saves every 20 frames to a folder.

Scenic Examples

Running Scenic scenarios is done by using the Scenic Python API to load a Scenic scenario and run it in the CARLA simulator. The list of example scenarios can be found in the Scenic Examples folder. Some of which are dynamic scenarios and some are static scenarios. For the scenarios to be generated an OpenDRIVE file is needed. In the example provided the CARLA map Town05 is given. Scenic Python API works by using the map and the scenario file to generate a scenario. The scenario is then run in the CARLA simulator.

STL Examples

STL testing was used for testing if the STL library worked as intended.

STL with CARLA was used to show if the STL library and a recorded CARLA scenario can be used together.

Safe Longitudinal Distance was used to show how a formalised rule can be monitored in carla, the rule is a safe longitudinal distance rule and an automatic cruise control system rules.

ScenarioRunner

ScenarioRunner is used in this project to generate and run scenarios. First, Scenic was going to be used, but we thought that it is easier to integrate external agents into ScenarioRunner. It also contains a number of other functionalities, such as having its own Python API built on top of the CARLA API, and a log reader which is really useful for the case of signal collection.

Check ScenarioRunner for a more detailed overview. There has been some changes in the code, but nothing that changes the functionality.

To be able to run a scenario in ScenarioRunner with the OpenSCENARIO specification there needs to be a controller that takes control of the ego vehicle. For this reason a script has been created where the scenario and the controller are initiated at the same time.

Leaderboard

Leaderboard uses ScenarioRunner to run an agent passed to it in a route. During the execution of the routes ScenarioRunner creates scenarios according to the NHTSA typology.

Check Leaderboard for a more detailed overview. There has been minor changes in the code, but nothing that changes the functionality.

To run the Leaderboard evaluator:

python leaderboard/scripts/run_evaluation.sh

Setting-up Experiments

To run the experiments, run_experiments.py is used. This script goes through all the agents and scenarios and record them while running them. As the script uses Leaderboard to run the scenarios, the scenarios are recorded at the records/ folder.

The agents used are Basic Agent, Behaviour Agent, and the TransFuser agent.

To be able to use the TransFuser agent clone the repository:

git clone https://github.com/autonomousvision/transfuser.git

and follow the instructions in the README.md file.

Set the environment variable TRANSFUSER_ROOT to the path to the repository:

export TRANSFUSER_ROOT=path/to/transfuser

Verification of Experiments

In order to monitor the experiments, to be able to collect data VerificationOfExperiments.py is used. This is similar to the examples above in the STL Examples section.