Attendees

  • Sachin
  • Gil
  • Caroline
  • Ethan
  • Eitan
  • Brian
  • Leila
  • Bhaskara
  • Peter
  • Max, Ben, Mike (PENN)

Agenda

  • Coordinate the effort to do motion planning/control for dynamic obstacles and define a set of objectives and roadmap for the same - in particular look at the needs (from a motion planning/control perspective) for people aware navigation
  • Define the needs/interface required from people detection/tracking for the planning/control effort

Details

  • Planning
    • Planners that can deal with dynamic obstacles
    • Global vs. Local planners
    • Planning times
  • Control
    • Local controllers that can deal with dynamic obstacles
    • Modify trajectory rollout to deal with dynamic obstacles
    • Other control schemes
  • Representation
    • Define structures for representing dynamic obstacles
      • Position
      • Velocity
      • Uncertainty
      • id
    • Minimally modify current costmap structure to deal with dynamic obstacles
      • Remove dynamic obstacles from incoming sensor stream
      • Deal with dynamic obstacles using forward simulation in trajectory rollout
    • Time varying costmap representations
  • Sensing
    • Needs for planning/control
      • position/velocity of dynamic obstacles (can be stubbed out for now)
      • uncertainty - represent expected path (for people)
      • sensor models for obstacles - needed to discriminate static/dynamic obstacles
  • Demo scenarios
    • Follow a person down the hallway instead of replanning and turning around
    • Person avoidance - stop and wait/move to the side if person walking towards you

Minutes

Describe motion_planning/Meetings/Minutes 2009-11-18 here.

  • Minimal change in current architecture approach
    • Deal with dynamic obstacles separately
    • New trajectory planner plugin takes dynamic world representation
    • World model is a combination of dynamic and static obstacles
    • Is this completely safe - if you think the person is going away from where you will be in the next timestep
      • is there a way to make this more safe?
    • Local planning window may be too small (1.5 seconds)
  • Dynamic obstacle tracker returns a list of predicted points in the future instead of returning velocities
    • minimal separation distance - what should this distance be?
      • prevent chattering in this instance
  • Global planner can generate a plan to avoid dynamic obstacles (Max)
    • local planner could decide on which dynamic obstacles the global planner needs to be worried about
    • Representation:
      • List of predicted positions in time for each dynamic obstacle
        • x, y + variance to incorporate uncertainty estimates
      • Radius of each dynamic obstacle
      • Allows for multiple trajectories for the same obstacle
        • maybe a person turns into an orthogonal hallway
    • Planning
      • x,y,theta, time - considers the probability of collision as well - if probability is high, those particular positions of robot in time are prohibited
      • finite horizon planning in time
        • longer than x,y,theta lattice planner - planning time within a few seconds
    • For each obstacle - multi-modal representation
      • Radius (Footprint? - need to lay down the footprint) - if the footprint exists, it overrides radius
      • Vector of trajectories
        • Each trajectory - vector of points + 1 probability for each trajectory
          • Each point - x,y,theta,variance (time?)
      • Time - uniform sampling/time for each point in trajectory - could be enforced in API for planner but data structure could still support non-uniform sampling.
  • Sensing
    • diff two consecutive sensor views to try and find dynamic obstacles
    • 2D optical flow?
  • Action items
    • Create a message to represent the dynamic obstacles (Eitan/Mike(Penn))
    • Perception literature
      • tracking/finding dynamic obstacles
      • optical flow?
      • blob tracker

Wiki: motion_planning/Meetings/Minutes 2009-11-18 (last edited 2009-11-19 01:16:54 by SachinChitta)