PythonRobotics
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Python sample codes and textbook for robotics algorithms.
PythonRobotics
Python codes and textbook for robotics algorithm.
Table of Contents
- What is this?
- Requirements
- Documentation
- How to use
- Localization
- Extended Kalman Filter localization
- Particle filter localization
- Histogram filter localization
- Mapping
- Gaussian grid map
- Ray casting grid map
- Lidar to grid map
- k-means object clustering
- Rectangle fitting
- SLAM
- Iterative Closest Point (ICP) Matching
- FastSLAM 1.0
- Path Planning
- Dynamic Window Approach
- Grid based search
- Dijkstra algorithm
- A* algorithm
- D* algorithm
- D* Lite algorithm
- Potential Field algorithm
- Grid based coverage path planning
- Particle Swarm Optimization (PSO)
- State Lattice Planning
- Biased polar sampling
- Lane sampling
- Probabilistic Road-Map (PRM) planning
- Rapidly-Exploring Random Trees (RRT)
- RRT*
- RRT* with reeds-shepp path
- LQR-RRT*
- Quintic polynomials planning
- Reeds Shepp planning
- LQR based path planning
- Optimal Trajectory in a Frenet Frame
- Path Tracking
- move to a pose control
- Stanley control
- Rear wheel feedback control
- Linear–quadratic regulator (LQR) speed and steering control
- Model predictive speed and steering control
- Nonlinear Model predictive control with C-GMRES
- Arm Navigation
- N joint arm to point control
- Arm navigation with obstacle avoidance
- Aerial Navigation
- drone 3d trajectory following
- rocket powered landing
- Bipedal
- bipedal planner with inverted pendulum
- License
- Use-case
- Contribution
- Citing
- Support
- Sponsors
- JetBrains
- 1Password
- Authors
What is PythonRobotics?
PythonRobotics is a Python code collection and a textbook of robotics algorithms.
Features:
-
Easy to read for understanding each algorithm's basic idea.
-
Widely used and practical algorithms are selected.
-
Minimum dependency.
See this documentation
or this Youtube video:
or this paper for more details:
Requirements to run the code
For running each sample code:
For development:
-
pytest (for unit tests)
-
pytest-xdist (for parallel unit tests)
-
mypy (for type check)
-
sphinx (for document generation)
-
pycodestyle (for code style check)
Documentation (Textbook)
This README only shows some examples of this project.
If you are interested in other examples or mathematical backgrounds of each algorithm,
You can check the full documentation (textbook) online: Welcome to PythonRobotics’s documentation! — PythonRobotics documentation
All animation gifs are stored here: AtsushiSakai/PythonRoboticsGifs: Animation gifs of PythonRobotics
How to use
-
Clone this repo.
git clone https://github.com/AtsushiSakai/PythonRobotics.git -
Install the required libraries.
-
using conda :
conda env create -f requirements/environment.yml -
using pip :
pip install -r requirements/requirements.txt
-
Execute python script in each directory.
-
Add star to this repo if you like it :smiley:.
Localization
Extended Kalman Filter localization
Reference
Particle filter localization

This is a sensor fusion localization with Particle Filter(PF).
The blue line is true trajectory, the black line is dead reckoning trajectory,
and the red line is an estimated trajectory with PF.
It is assumed that the robot can measure a distance from landmarks (RFID).
These measurements are used for PF localization.
Reference
Histogram filter localization

This is a 2D localization example with Histogram filter.
The red cross is true position, black points are RFID positions.
The blue grid shows a position probability of histogram filter.
In this simulation, x,y are unknown, yaw is known.
The filter integrates speed input and range observations from RFID for localization.
Initial position is not needed.
Reference
Mapping
Gaussian grid map
This is a 2D Gaussian grid mapping example.

Ray casting grid map
This is a 2D ray casting grid mapping example.

Lidar to grid map
This example shows how to convert a 2D range measurement to a grid map.

k-means object clustering
This is a 2D object clustering with k-means algorithm.

Rectangle fitting
This is a 2D rectangle fitting for vehicle detection.

SLAM
Simultaneous Localization and Mapping(SLAM) examples
Iterative Closest Point (ICP) Matching
This is a 2D ICP matching example with singular value decomposition.
It can calculate a rotation matrix, and a translation vector between points and points.

Reference
FastSLAM 1.0
This is a feature based SLAM example using FastSLAM 1.0.
The blue line is ground truth, the black line is dead reckoning, the red line is the estimated trajectory with FastSLAM.
The red points are particles of FastSLAM.
Black points are landmarks, blue crosses are estimated landmark positions by FastSLAM.

Reference
Path Planning
Dynamic Window Approach
This is a 2D navigation sample code with Dynamic Window Approach.

Grid based search
Dijkstra algorithm
This is a 2D grid based the shortest path planning with Dijkstra's algorithm.

In the animation, cyan points are searched nodes.
A* algorithm
This is a 2D grid based the shortest path planning with A star algorithm.

In the animation, cyan points are searched nodes.
Its heuristic is 2D Euclid distance.
D* algorithm
This is a 2D grid based the shortest path planning with D star algorithm.

The animation shows a robot finding its path avoiding an obstacle using the D* search algorithm.
Reference
D* Lite algorithm
This algorithm finds the shortest path between two points while rerouting when obstacles are discovered. It has been implemented here for a 2D grid.

The animation shows a robot finding its path and rerouting to avoid obstacles as they are discovered using the D* Lite search algorithm.
Refs:
Potential Field algorithm
This is a 2D grid based path planning with Potential Field algorithm.

In the animation, the blue heat map shows potential value on each grid.
Reference
Grid based coverage path planning
This is a 2D grid based coverage path planning simulation.

Particle Swarm Optimization (PSO)
This is a 2D path planning simulation using the Particle Swarm Optimization algorithm.

PSO is a metaheuristic optimization algorithm inspired by bird flocking behavior. In path planning, particles explore the search space to find collision-free paths while avoiding obstacles.
The animation shows particles (blue dots) converging towards the optimal path (yellow line) from start (green area) to goal (red star).
References
State Lattice Planning
This script is a path planning code with state lattice planning.
This code uses the model predictive trajectory generator to solve boundary problem.
Reference
Biased polar sampling

Lane sampling

Probabilistic Road-Map (PRM) planning

This PRM planner uses Dijkstra method for graph search.
In the animation, blue points are sampled points,
Cyan crosses means searched points with Dijkstra method,
The red line is the final path of PRM.
Reference
Rapidly-Exploring Random Trees (RRT)
RRT*

This is a path planning code with RRT*
Black circles are obstacles, green line is a searched tree, red crosses are start and goal positions.
Reference
RRT* with reeds-shepp path

Path planning for a car robot with RRT* and reeds shepp path planner.
LQR-RRT*
This is a path planning simulation with LQR-RRT*.
A double integrator motion model is used for LQR local planner.

Reference
Quintic polynomials planning
Motion planning with quintic polynomials.

It can calculate a 2D path, velocity, and acceleration profile based on quintic polynomials.
Reference
Reeds Shepp planning
A sample code with Reeds Shepp path planning.

Reference
LQR based path planning
A sample code using LQR based path planning for double integrator model.

Optimal Trajectory in a Frenet Frame

This is optimal trajectory generation in a Frenet Frame.
The cyan line is the target course and black crosses are obstacles.
The red line is the predicted path.
Reference
-
Optimal Trajectory Generation for Dynamic Street Scenarios in a Frenet Frame
-
Optimal trajectory generation for dynamic street scenarios in a Frenet Frame
Path Tracking
move to a pose control
This is a simulation of moving to a pose control

Reference
Stanley control
Path tracking simulation with Stanley steering control and PID speed control.
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Reference
Rear wheel feedback control
Path tracking simulation with rear wheel feedback steering control and PID speed control.
![]()
Reference
Linear–quadratic regulator (LQR) speed and steering control
Path tracking simulation with LQR speed and steering control.
![]()
Reference
Model predictive speed and steering control
Path tracking simulation with iterative linear model predictive speed and steering control.
Reference
Nonlinear Model predictive control with C-GMRES
A motion planning and path tracking simulation with NMPC of C-GMRES
![]()
Reference
Arm Navigation
N joint arm to point control
N joint arm to a point control simulation.
This is an interactive simulation.
You can set the goal position of the end effector with left-click on the plotting area.

In this simulation N = 10, however, you can change it.
Arm navigation with obstacle avoidance
Arm navigation with obstacle avoidance simulation.

Aerial Navigation
drone 3d trajectory following
This is a 3d trajectory following simulation for a quadrotor.

rocket powered landing
This is a 3d trajectory generation simulation for a rocket powered landing.

Reference
Bipedal
bipedal planner with inverted pendulum
This is a bipedal planner for modifying footsteps for an inverted pendulum.
You can set the footsteps, and the planner will modify those automatically.

License
MIT
Use-case
If this project helps your robotics project, please let me know with creating an issue.
Your robot's video, which is using PythonRobotics, is very welcome!!
This is a list of user's comment and references:users_comments
Contribution
Any contribution is welcome!!
Please check this document:How To Contribute — PythonRobotics documentation
Citing
If you use this project's code for your academic work, we encourage you to cite our papers
If you use this project's code in industry, we'd love to hear from you as well; feel free to reach out to the developers directly.
Supporting this project
If you or your company would like to support this project, please consider:
If you would like to support us in some other way, please contact with creating an issue.
Sponsors
JetBrains
They are providing a free license of their IDEs for this OSS development.
1Password
They are providing a free license of their 1Password team license for this OSS project.