Title :
Discrete and Continuous, Probabilistic Anticipation for Autonomous Robots in Urban Environments
Author :
Havlak, Frank ; Campbell, Malachy
Author_Institution :
Sibley Sch. of Mech. & Aerosp. Eng., Cornell Univ., Ithaca, NY, USA
Abstract :
This paper develops a probabilistic anticipation algorithm for dynamic objects observed by an autonomous robot in an urban environment. Predictive Gaussian mixture models are used due to their ability to probabilistically capture continuous and discrete obstacle decisions and behaviors; the predictive system uses the probabilistic output (state estimate and covariance) of a tracking system and map of the environment to compute the probability distribution over future obstacle states for a specified anticipation horizon. A Gaussian splitting method is proposed based on the sigma-point transform and the nonlinear dynamics function, which enables increased accuracy as the number of mixands grows. An approach to caching elements of this optimal splitting method is proposed, in order to enable real-time implementation. Simulation results and evaluations on data from the research community demonstrate that the proposed algorithm can accurately anticipate the probability distributions over future states of nonlinear systems.
Keywords :
Gaussian processes; collision avoidance; mixture models; mobile robots; nonlinear dynamical systems; statistical distributions; transforms; Gaussian splitting method; anticipation horizon; autonomous robots; caching elements; continuous obstacle decision; discrete obstacle decision; dynamic objects; nonlinear dynamics function; nonlinear system; obstacle states; optimal splitting method; predictive Gaussian mixture models; predictive system; probabilistic anticipation algorithm; probabilistic output; probability distribution; real-time implementation; research community; sigma-point transform; state estimate; urban environments; Accuracy; Measurement; Noise; Probabilistic logic; Probability distribution; Robots; Transforms; Field robots; Gaussian mixture models; nonlinear filtering;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2013.2291620