.
└── Search-based Planning
└── Search_2D
├── bfs.py # breadth-first searching
├── dfs.py # depth-first searching
├── dijkstra.py # dijkstra's
├── a_star.py # A*
├── bidirectional_a_star.py # Bidirectional A*
├── ARAstar.py # Anytime Reparing A*
├── IDAstar.py # Iteratively Deepening A*
├── LRTAstar.py # Learning Real-time A*
├── RTAAstar.py # Real-time Adaptive A*
├── LPAstar.py # Lifelong Planning A*
├── D_star.py # D* (Dynamic A*)
├── Anytime_D_star.py # Anytime D*
└── D_star_Lite.py # D* Lite
└── Search_3D
├── Astar3D.py # A*_3D
├── bidirectional_Astar3D.py # Bidirectional A*_3D
├── RTA_Astar3D.py # Real-time Adaptive A*_3D
└── LRT_Astar3D.py # Learning Real-time A*_3D
└── Sampling-based Planning
└── rrt_2D
├── rrt.py # rrt : goal-biased rrt
└── rrt_star.py
└── rrt_3D
├── rrt3D.py # rrt3D : goal-biased rrt3D
└── rrtstar3D.py
└── Stochastic Shortest Path
├── value_iteration.py # value iteration
├── policy_iteration.py # policy iteration
├── Q-value_iteration.py # Q-value iteration
└── Q-policy_iteration.py # Q-policy iteration
└── Model-free Control
├── Sarsa.py # SARSA : on-policy TD control
└── Q-learning.py # Q-learning : off-policy TD control
- Brown: losing states
- Brown: losing states
- Potential Field, [PPT]: Real-Time Obstacle Avoidance for Manipulators and Mobile Robots
- Hybrid A*: Practical Search Techniques in Path Planning for Autonomous Driving
- Anytime Repairing A*: ARA*: Anytime A* with Provable Bounds on Sub-Optimality
- Lifelong Planning A*: Lifelong Planning A*
- D*: Optimal and Efficient Path Planning for Partially-Known Environments
- Focussed D*: The Focussed D* Algorithm for Real-Time Replanning
- D* Lite: D* Lite
- Field D*: Field D*: An Interpolation-based Path Planner and Replanner
- Anytime D*: Anytime Dynamic A*: An Anytime, Replanning Algorithm
- Theta* & AP Theta*: Theta*: Any-Angle Path Planning on Grids
- Lazy Theta*: Lazy Theta*: Any-Angle Path Planning and Path Length Analysis in 3D
- Incremental Phi*: Incremental Phi*: Incremental Any-Angle Path Planning on Grids