Title :
Probabilistic Collision Checking With Chance Constraints
Author :
Du Toit, Noel E. ; Burdick, Joel W.
Author_Institution :
Dept. of Mech. Eng., California Inst. of Technol., Pasadena, CA, USA
Abstract :
Obstacle avoidance, and by extension collision checking, is a basic requirement for robot autonomy. Most classical approaches to collision-checking ignore the uncertainties associated with the robot and obstacle´s geometry and position. It is natural to use a probabilistic description of the uncertainties. However, constraint satisfaction cannot be guaranteed, in this case, and collision constraints must instead be converted to chance constraints. Standard results for linear probabilistic constraint evaluation have been applied to probabilistic collision evaluation; however, this approach ignores the uncertainty associated with the sensed obstacle. An alternative formulation of probabilistic collision checking that accounts for robot and obstacle uncertainty is presented which allows for dependent object distributions (e.g., interactive robot-obstacle models). In order to efficiently enforce the resulting collision chance constraints, an approximation is proposed and the validity of this approximation is evaluated. The results presented here have been applied to robot-motion planning in dynamic, uncertain environments.
Keywords :
approximation theory; collision avoidance; probability; robots; approximation; chance constraint; extension collision checking; linear probabilistic constraint evaluation; obstacle avoidance; obstacle geometry; obstacle position; probabilistic collision checking; robot autonomy; robot motion planning; Approximation methods; Collision avoidance; Gaussian distribution; Integrated circuits; Probabilistic logic; Robots; Uncertainty; Chance constraints; collision avoidance; probabilistic collision checking;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2011.2116190