Vision-based Motion Planning for an Autonomous Motorcycle on Ill-Structured Road Reporter :鄒嘉恆 Date : 08/31/09.

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Presentation transcript:

Vision-based Motion Planning for an Autonomous Motorcycle on Ill-Structured Road Reporter :鄒嘉恆 Date : 08/31/09

Intr oduction Design a vision-based motion planning system for desert terrain. The motion planning is based on a vision vector space(V 2 -space). Motivated by the DARPA Grand Challenge.

Outline V 2 -space Algorithm – V 2 -Space construction – Motion planning in V 2 -space Experimental results Conclusion

V2-space Pin-hole model : Video frame F is a matrix of RGB values :

Algorithm : V2-space construction

Color correction :

Algorithm : V2-space construction Surface verification : Obstacles detection :

Algorithm : V2-space construction Direction extraction :

Algorithm : Motion planning in V2-space A point robot with no time delay :

Algorithm : Motion planning in V2-space Choose the velocity profile v p (t) The motorcycle cannot run too fast for a given trajectory radius R.

A lgorithm : Motion planning in V 2 -space Incorporating GPS information :

Algorithm : Vehicle size and processing delay Vehicle size

Algorithm : Vehicle size and processing delay Image processing delay :

Algorithm overview

Experimental results From video clip :

Experimental results From video clip :

Experimental results From video clip :

Experimental results Filed tests :

Conclusions Propose V 2 -space, a new framework that represent road feature and allows fast construction and motion planning. In the future, they will consider incorporating V 2 -space in a stereo vision system.