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    Author
    Amato, Nancy M. (3)
    Denny, Jory (2)Burgos, Juan (1)Jacobs, Sam Ade (1)Mahadevan, Aditya (1)View MoreJournal
    2012 IEEE International Conference on Robotics and Automation (3)
    KAUST Grant NumberKUS-C1-016-04 (3)PublisherInstitute of Electrical and Electronics Engineers (IEEE) (3)Type
    Conference Paper (3)
    Year (Issue Date)2012 (3)Item AvailabilityMetadata Only (3)

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    A scalable method for parallelizing sampling-based motion planning algorithms

    Jacobs, Sam Ade; Manavi, Kasra; Burgos, Juan; Denny, Jory; Thomas, Shawna; Amato, Nancy M. (2012 IEEE International Conference on Robotics and Automation, Institute of Electrical and Electronics Engineers (IEEE), 2012-05) [Conference Paper]
    This paper describes a scalable method for parallelizing sampling-based motion planning algorithms. It subdivides configuration space (C-space) into (possibly overlapping) regions and independently, in parallel, uses standard (sequential) sampling-based planners to construct roadmaps in each region. Next, in parallel, regional roadmaps in adjacent regions are connected to form a global roadmap. By subdividing the space and restricting the locality of connection attempts, we reduce the work and inter-processor communication associated with nearest neighbor calculation, a critical bottleneck for scalability in existing parallel motion planning methods. We show that our method is general enough to handle a variety of planning schemes, including the widely used Probabilistic Roadmap (PRM) and Rapidly-exploring Random Trees (RRT) algorithms. We compare our approach to two other existing parallel algorithms and demonstrate that our approach achieves better and more scalable performance. Our approach achieves almost linear scalability on a 2400 core LINUX cluster and on a 153,216 core Cray XE6 petascale machine. © 2012 IEEE.
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    A sampling-based approach to probabilistic pursuit evasion

    Mahadevan, Aditya; Amato, Nancy M. (2012 IEEE International Conference on Robotics and Automation, Institute of Electrical and Electronics Engineers (IEEE), 2012-05) [Conference Paper]
    Probabilistic roadmaps (PRMs) are a sampling-based approach to motion-planning that encodes feasible paths through the environment using a graph created from a subset of valid positions. Prior research has shown that PRMs can be augmented with useful information to model interesting scenarios related to multi-agent interaction and coordination. © 2012 IEEE.
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    The Toggle Local Planner for sampling-based motion planning

    Denny, Jory; Amato, Nancy M. (2012 IEEE International Conference on Robotics and Automation, Institute of Electrical and Electronics Engineers (IEEE), 2012-05) [Conference Paper]
    Sampling-based solutions to the motion planning problem, such as the probabilistic roadmap method (PRM), have become commonplace in robotics applications. These solutions are the norm as the dimensionality of the planning space grows, i.e., d > 5. An important primitive of these methods is the local planner, which is used for validation of simple paths between two configurations. The most common is the straight-line local planner which interpolates along the straight line between the two configurations. In this paper, we introduce a new local planner, Toggle Local Planner (Toggle LP), which extends local planning to a two-dimensional subspace of the overall planning space. If no path exists between the two configurations in the subspace, then Toggle LP is guaranteed to correctly return false. Intuitively, more connections could be found by Toggle LP than by the straight-line planner, resulting in better connected roadmaps. As shown in our results, this is the case, and additionally, the extra cost, in terms of time or storage, for Toggle LP is minimal. Additionally, our experimental analysis of the planner shows the benefit for a wide array of robots, with DOF as high as 70. © 2012 IEEE.
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