Title: Autonomous Helicopter Mapping
1Autonomous Helicopter Mapping
- Andrew Ng, Mark Diel,
- Eric Berger, Adam Coates, Varun Ganapathi,
- Eric Liang, Dirk Hähnel, Rahul Biswas, Sebastian
Thrun - Stanford University
- Contact thrun_at_stanford.edu, ang_at_cs.stanford.edu
2The Stanford Autonomous Helicopter
- 6-Month Goals
- Flight near obstacles, caves
- Maintenance-free hardware
Payload 14 pounds Weight 32 pounds
3The Stanford Autonomous Helicopter
Magnetometer
GPS
IMU
802.11b
PC 104
SICK lite (3.7 pounds)
Intel Stayton
- 6-Month Goals
- Flight near obstacles, caves
- Maintenance-free hardware
Payload 14 pounds Weight 32 pounds
4Classical Approach m-Synthesis Control
5Our Approach Reinforcement Learning
6Our Approach Reinforcement Learning
7Four-legged walking
Same learning algorithm used to control complex,
very high dimensional (36D), underactuated
robots.
with Lawrence and Tal
8Mapping (Autonomous Flight)
9Mapping (Autonomous Flight)
10Results (Map)
WARNING These are VRML files you will have to
edit the path to those files!
Map
Raw data
Red wall White Road Green
Vegetation Yellow Obstacle
11Conclusions
- Autonomous flight in 11 days.
- Integrated flight and mapping.
- Next steps
- Robust flight in confined spaces.
- Coordinated ground/air mapping and navigation.