Table of Contents

Semestral work - Frontier-based April-tag localization

The goal of the semestral work is to implement high-level exploration node explorer.py, which will utilize algorithms implemented during the semester to explore an unknown maze and localize a hidden Apriltag. The exploration node will employ nodes implemented during regular labs (factorgraph localization, ICP SLAM, frontier detection, planning and path following). The simulation semestral work will be carried out individually (no teams). Teams of up to 4 will be allowed for the second part.

Details about what Apriltags are and how they work are given in Lab 06.

How to start?

Git pull.

Then you can start implementing your high-level exploration node in aro_exploration/nodes/exploration/explorer.py.

Before you start coding:
  • Please, read the section Evaluation details to get familiar with the requirements and testing procedure of the semestral work.
  • There is a FAQ section at the end of this document that can help you solve some common issues.
  • To launch and debug your exploration pipeline (until sufficiently developed), use the roslaunch aro_exploration aro_exploration_sim.launch command (inside Singularity).
  • To perform a test evaluation, use the roslaunch aro_exploration run_eval.launch command (inside Singularity).

High-level exploration node

A template script is provided in the package. Algorithm below provides an overview of a possible implementation. An exploration experiment with such a node is shown in the video above.

Exploration node explorer.py — overview of a possible implementation

  1. Pick a frontier, if any, or a random traversable position as a goal. ◃ frontier.py
  2. Plan a path to the goal, or go to line 1 if there is no path. ◃ planner.py
  3. Delegate path execution to low-level control. ◃ path_follower.py
  4. Monitor execution of the plan.
  5. Invoke a recovery behavior if needed.
  6. Check for localization of Apriltag ◃ aro_localization.py
  7. Repeat from line 1 if Apriltag not localized / return to beginning if localized.

Deadlines, Milestones and Points

You can obtain 20 points from the two following milestones:

Milestone I (max 10 points): Upload all codes to BRUTE before 2024-05-16 23:59:59. Use the provided submission script as with previous homeworks. The evaluation will be based on running the run_eval.py node (see “Evaluation details” section for details) ⇒ please make sure that:

Milestone II (max 10 points): Transfer and fine-tune your code on real Turtlebots. Demonstrate exploration and tag localization functionality: robot should successfully localize the tag and return to starting position. Time for the demonstrations will be during semester weeks 13 and 14. You will be given access to the lab with the real robots earlier so that you can tune the solutions during the semester.

Evaluation details (Milestone I)

Evaluation will be performed by an automatic evaluation script, which will run the simulation for at most 120 seconds and then stop the simulation. A simplified version is provided for local testing with simple testing maps. The evaluation script listens to topic /relative_marker_pose for the position of the relative marker (message type geometry_msgs/PoseStamped). Evaluation node also monitors ground truth of robot position to determine if it returned to the starting position.

Please, make sure your solution publishes the appropriate data on this topic. Otherwise, your solution might not be accepted!

To test your solution, you can run the run_eval.launch file. Use the argument world to change the map (e.g. “world:=aro_eval_1”) and argument marker_config to change placement of the markers. The launch file starts the robot simulation and outputs the awarded points. The results are also stored into the folder ~/aro_evaluation. Make sure your solution can be tested by the evaluation script without any errors before submission!

Example of how to start the evaluation:

roslaunch aro_exploration run_eval.launch world:=aro_eval_1 marker_config:=2

Points from semestral work

The number of points from the semestral work will be determined by number of successful tag localizations (up to 1pt) and returns of the robot to starting position (up to 1pt). Five simulation experiments with randomized tag locations will be performed for each submission to determine the final score.

Successful localization and return to home are each awarded 1 pt if the pose is less than 0.25 meter from the ground truth position. The awarded points then linearly decrease to the distance of 1 meter. Only the x,y position of the robot/marker is evaluated, not its orientation. If the marker was not localized, no points will be awarded for robot position.

The evaluation will be done on worlds similar to aro_eval_1. The worlds will be simple maze-like corridors. Only the burger robot will be used in evaluation.

The maximum time limit of single test instance out of 5 is 120s.

Evaluation details (Milestone II)

The last 2 labs of the semester are reserved for demonstration of your code on real robots. You can work in teams of up to 4.

You should not be directly using any 'aro_sim' configuration/script/launch file on the robot. Your pipeline execution on the real robot should be performed from aro_exploration/launch/exploration/aro_exploration_real.launch.

See TurtleBot Lab Guide for details describing how to work with the real robots.

Possible improvements

Whole pipeline

Please note that we will evaluate performance of the whole system in terms of the localization accuracy, so the nodes must not only work individually but also work well with other nodes to fulfill their role in the whole system. Things to consider:


Factorgraph localization


SLAM


Frontier detection


Path planning


Path following

Troubleshooting