Skip to content

Mohamed-Elgouhary/f1tenth_lab2_template

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

20 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Lab 2: Automatic Emergency Braking

I. Learning Goals

  • Using the LaserScan message in ROS 2
  • Instantaneous Time to Collision (iTTC)
  • Safety critical systems

II. Overview

The goal of this lab is to develop a safety node for the race cars that will stop the car from collision when travelling at higher velocities. We will implement Instantaneous Time to Collision (iTTC) using the LaserScan message in the simulator.

For different commonly used ROS 2 messages, they are kept mostly the same as in ROS 1. You can use ros2 interface show <msg_name> to see the definition of messages. Note for messages that are not installed by default by the distro we use in our container, you'll have to first install it for this to work.

The LaserScan Message

LaserScan message contains several fields that will be useful to us. You can see detailed descriptions of what each field contains in the API. The one we'll be using the most is the ranges field. This is an array that contains all range measurements from the LiDAR radially ordered. You'll need to subscribe to the /scan topic and calculate iTTC with the LaserScan messages.

The Odometry Message

Both the simulator node and the car itself publish Odometry messages. Within its several fields, the message includes the cars position, orientation, and velocity. You'll need to explore this message type in this lab.

The AckermannDriveStamped Message

You've already used AckermannDriveStamped in the previous lab. It will be the message type that we'll use throughout the course to send driving commands to the simulator and the car. In the simulator, you can stop the car by sending an AckermannDriveStamped message with the speed field set to 0.0.

III. The TTC Calculation

Time to Collision (TTC) is the time it would take for the car to collide with an obstacle if it maintained its current heading and velocity. We approximate the time to collision using Instantaneous Time to Collision (iTTC), which is the ratio of instantaneous range to range rate calculated from current range measurements and velocity measurements of the vehicle.

As discussed in the lecture, we can calculate the iTTC as:

$$ iTTC=\frac{r}{\lbrace- \dot{r}\rbrace_{+}} $$

where $r$ is the instantaneous range measurements, and $\dot{r}$ is the current range rate for that measurement. And the operator $\lbrace \rbrace_{+}$ is defined as $\lbrace x\rbrace_{+} = \text{max}( x, 0 )$. The instantaneous range $r$ to an obstacle is easily obtained by using the current measurements from the LaserScan message. Since the LiDAR effectively measures the distance from the sensor to some obstacle. The range rate $\dot{r}$ is the expected rate of change along each scan beam. A positive range rate means the range measurement is expanding, and a negative one means the range measurement is shrinking. Thus, it can be calculated in two different ways. First, it can be calculated by mapping the vehicle's current longitudinal velocity onto each scan beam's angle by using $v_x \cos{\theta_{i}}$. Be careful with assigning the range rate a positive or a negative value. The angles could also be determined by the information in LaserScan messages. The range rate could also be interpreted as how much the range measurement will change if the vehicle keeps the current velocity and the obstacle remains stationary. Second, you can take the difference between the previous range measurement and the current one, divide it by how much time has passed in between (timestamps are available in message headers), and calculate the range rate that way. Note the negation in the calculation this is to correctly interpret whether the range measurement should be decreasing or increasing. For a vehicle travelling forward towards an obstacle, the corresponding range rate for the beam right in front of the vehicle should be negative since the range measurement should be shrinking. Vice versa, the range rate corresponding to the vehicle travelling away from an obstacle should be positive since the range measurement should be increasing. The operator is in place so the iTTC calculation will be meaningful. When the range rate is positive, the operator will make sure iTTC for that angle goes to infinity.

After your calculations, you should end up with an array of iTTCs that correspond to each angle. When a time to collision drops below a certain threshold, it means a collision is imminent.

IV. Automatic Emergency Braking with iTTC

For this lab, you will make a Safety Node that should halt the car before it collides with obstacles. To do this, you will make a ROS 2 node that subscribes to the LaserScan and Odometry messages. It should analyze the LaserScan data and, if necessary, publish an AckermannDriveStamped with the speed field set to 0.0 m/s to brake. After you've calculated the array of iTTCs, you should decide how to proceed with this information. You'll have to decide how to threshold, and how to best remove false positives (braking when collision isn't imminent). Don't forget to deal with infs or nans in your arrays.

To test your node, you can launch the sim container with kb_teleop set to True in sim.yaml. Then in another bash session inside the sim container, launch the teleop_twist_keyboard node from teleop_twist_keyboard package for keyboard teleop. It should already be installed as a dependency of the simulator. After running the simulation, the keyboard teleop, and your safety node, use the reset tool for the simulation and drive the vehicle towards a wall.

Note the following topic names for your publishers and subscribers:

  • LaserScan: /scan
  • Odometry: /ego_racecar/odom, specifically, the longitudinal velocity of the vehicle can be found in twist.twist.linear.x
  • AckermannDriveStamped: /drive

V: Deliverables and Submission

You can implement this node in either C++ or Python. A skeleton package is already provided in the repo that you can use. If you're using docker, develop directly in the simulation container provided, and put your package in /sim_ws/src alongside the simulation package. When following the instruction in the simulation repo, the repo directory will be mounted to the sim container. You can also add extra volumes mounted for your convenience when editing the files. For example, if you're using the rocker tool:

rocker --nvidia --x11 --volume .:/sim_ws/src/f1tenth_gym_ros --volume <path_to_your_package_on_host>:/sim_ws/src/safety_node -- f1tenth_gym_ros

Or if you're using docker-compose, add an extra line - <path_to_your_package_on_host>:/sim_ws/src/safety_node to your volumes field for the sim container.

Note that if you're using Windows, make sure your files have Unix style line endings. You can use dos2unix or have correct settings in your text editor.

Deliverable 1: After you're finished, update the entire skeleton package directory with your safety_node package and directly commit and push to the repo Github classroom created for you. Your commited code should start and run in simulation smoothly.

Deliverable 2: Make a screen cast of running your safety node in the simulation. Drive the car with keyboard teleop along the hallways of Levine, showing it doesn't brake when travelling straight in the hallway. You need to show that your safe node doesn't generate false positives. i.e. The car doesn't suddenly stop while travelling down the hallway. Then show the car driving towards a wall and braking correctly. Upload your video to YouTube (unlisted) and include a link to the video in SUBMISSION.md.

VI: Grading Rubric

  • Compilation: 30 Points
  • Provided Video: 20 Points
  • Correctly stops before collision: 30 Points
  • Correctly calculates TTC: 10 Points
  • Able to navigate through the hallway: 10 Points

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 45.0%
  • CMake 28.5%
  • C++ 26.5%