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Peds and Paths: Small Group Behavior in Urban Environments

Peds and Paths: Small Group Behavior in Urban Environments. Joseph K. Kearney Hongling Wang Terry Hostetler Kendall Atkinson The University of Iowa. Pedestrian Activity in Urban Environments. Couples walking down a sidewalk Families window shopping Commuters queuing at a bus stop

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Peds and Paths: Small Group Behavior in Urban Environments

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  1. Peds and Paths: Small Group Behavior in Urban Environments Joseph K. Kearney Hongling Wang Terry Hostetler Kendall Atkinson The University of Iowa

  2. Pedestrian Activity in Urban Environments • Couples walking down a sidewalk • Families window shopping • Commuters queuing at a bus stop • Friends stopping to chat

  3. Related Research • Social psychology (McPhail) • Flocking (Reynolds, Tu & Terzopoulos, Brogan and Hodgins) • Vehicle and crowd simulation (Musse & Thalmann, Thomas & Donikian, Sukthankar)

  4. Public Gatherings • Mix of singles and small groups of companions • Majority of people are in clusters of two to five • Frequency of occurrence of a cluster is inversely proportional to size

  5. What is a Group? • Proximity • Coupled Behavior • Common Purpose • Relationship Between Members

  6. Moving Formations • Pairs: Side by side • Triples: Triangular shape

  7. Stationary Formations Conversation Circle Group Center is Focus Arc Fixed Center of Focus

  8. Modeling Walkways and Roads as Ribbons in Space walkway axis offset  Object distance

  9. Curvilinear Coordinate System • Defines geometry of navigable surfaces • Give a local orientation to the path • Channels traffic into parallel streams • Frame of reference for spatial relations • Obstacle avoidance • Navigation walkway axis offset  Object distance

  10. Arc-Length Parameterization • Parametric spline curves for ribbon axis • Flexible • Differentiable • Must relate parameter to arc length • Current approaches impractical for real-time applications

  11. Traditional approach of arc-length parameterization for parametric curves • Compute arc length s as a function of parameter t s=A(t) • Compute the inverse of the arc-length function • Replace parameter t in Q(t)=(x(t),y(t),z(t)) with

  12. Problems with traditional approach • Generally integral for A(t)does not integrate • Function is not elementary function • Solutions by numeric methods impractical for real-time applications

  13. Related work • Numerical methods for mappings between parameter and arc length, e.g., [Guenter 90] • Impractical in real-time applications • Build 2 Bezier curves for mappings between arc length and parameter, one for each direction, e.g., [Walter 96] • Error uncontrolled • Possible inconsistency between the 2 mapping directions • No guarantee of monotonicity

  14. Approximately arc-length parameterized cubic spline curve (1) Compute curve length (2) Find m+1 equally spaced points on input curve (3) Interpolate (x,y,z) to arc length s to get a new cubic spline curve

  15. Compute Curve length • Compute arc length of each cubic spline piece with Simpson’s rule • Adaptive methods can be used to control the accuracy of arc length computation • Lengths of all spline pieces are summed • Build a table for mappings between parameter and arc length on knot points

  16. Find m+1equally spaced points • Problem • Mappings from equally spaced arc-length values to parameter values • Solution: • Table search to map an arc length value to a parameter interval • Bisection method to map the arc length value to a parameter value within the parameter interval

  17. Compute an approximate arc-length parameterized spline curve • m+1 points as knot points • Using cubic spline interpolation • End point derivative conditions • Direction consistent with input curve • Magnitude of 1.0 • Not-a-knot conditions

  18. Errors • Match error • Misfit of the derived curve from an input curve • Arc-length parameterization error • Deviation of the derived curve from arc-length parameterization

  19. Errors analysis • Match error • Match error is difference between the two curves at corresponding points, |Q(t)-P(s)| • Arc-length parameterization error • For an arc-length parameterized curve, • Arc-length parameterization error measured by

  20. Experimental results (1) Experimental curve (2) Curvature of the curve

  21. Experimental results (cont.) (1) m=5 (2) m=10 Experimental curve(blue) and the derived curve (red)

  22. Experimental results (cont.) (1) m = 5 (2) m = 10 Match error in the derived curve

  23. Experimental results (cont.) (1) m=5 (2) m=10 Arc-length parameterization error in the derived curve

  24. Error factors in experimental results • Both errors increase with curvature • Both errors decrease with m • Maximal match error decreases 10 times when m doubled • Maximal arc-length parameterization error decreases 5 times when m doubled

  25. Strengths of this technique • Run-time efficiency is high • No mapping between parameter and arc-length needed • No table search needed for mapping from curvilinear coordinates to Cartesian coordinates • Mapping form Cartesian coordinates to curvilinear coordinates is efficient (introduced in another paper) • Time-consuming computations can be put either in initialization period or off-line

  26. Strengths of this technique (cont.) • Higher accuracy can be achieved • By computing length of the input curve more accurately • By locating equal-spaced points more accurately • By increasing m • Burden of higher accuracy is only more memory • Doubling m requires doubling the memory for spline curve coefficients

  27. Walking Behavior • Influenced by constraints on movement • Control Parameters • Speed • Accelerate, Coast, or Decelerate • Orientation • Turn Left, No Turn, or Turn Right

  28. Action Space Accelerate Accelerate Accelerate Turn Left No Turn Turn Right Coast Coast Coast Turn Left No Turn Turn Right Decelerate Decelerate Decelerate Turn Left No Turn Turn Right

  29. Distributed Preference Voting • Delegation of voters: Constraint Proxies • A proxy votes on all cells of the action space • Votes are tallied • Winning cell represents best compromise among competing interests

  30. Vote Tabulation Pursuit Point Tracking Maintain Target Velocity Inertia 1.0 1.0 Avoid Obstacles Avoid Peds Maintain Formation 1.0 Centering 4.0 2.0 5.0 2.0 Electioneer Winning Cell

  31. Pursuit Point target path walkway axis • Located a small distance ahead of pedestrians on their target path • Shared by all members of a group pursuit point   ped

  32. Pursuit Point Tracking • Pursuit Direction • vector from group’s center to the Pursuit Point • This proxy votes to align a walker’s orientation with the group’s Pursuit Direction

  33. One Pedestrian Following a Path walkway axis pursuit point  pursuit direction offset  ped 1 distance

  34. Two Pedestrians Following a Path walkway axis pursuit point  pursuit direction   ped 1 ped 2

  35. Vote to Turn Right Turn No Turn Left Turn Right Accelerate Coast Decelerate

  36. Maintain Formation • Group Slip • maximum distance a pedestrian is allowed to move in front of or behind the rest of the group • If group slip is violated, this proxy votes to accelerate or decelerate to catch up with the group

  37. Group Slip walkway axis walkway axis walkway axis pursuit point  pursuit point  pursuit point         group slip group slip group slip Two pedestrians in formation Three pedestrians in formation Two pedestrians not in formation

  38. A Group of Two Following a Path Pursuit Point Tracking Maintain Formation walkway axis -1.0 -1.0 +1.0 -1.0 -1.0 +1.0 -1.0 -1.0 +1.0 +1.0 +1.0 +1.0 -1.0 -1.0 -1.0 -1.0 -1.0 -1.0 pursuit point  1.0 2.0 +1.0 +1.0 +3.0 -3.0 -3.0 -1.0 -3.0 -3.0 -3.0  ped 2  ped 1 Winning vote = Accelerate/Turn Right Election for ped 1

  39. Avoiding Pedestrians • Activated when a companion intrudes • Repulsion can lead to undesirable equilibria of forces • By adding a small orthogonal force we rotate out of local minima walkway axis ped 2 ped 1 ped 3

  40. Vote to Avoid a Companion

  41. Scenarios • Following a circular path • Avoiding an obstacle • Passing through a constriction

  42. Following a Circular Path • Target path is formed by the series of pursuit points • Parameters • turn angle increment • look-ahead distance • path curvature

  43. Following a Circular Path -- Trajectory walkway axis walkway axis ped 1 ped 1 target path target path Large look-ahead distance Small look-ahead distance

  44. Avoiding an Obstacle • Avoid Obstacle proxy steers pedestrian to an obstacle’s nearest side • Pursuit point’s offset is shifted around large obstacles

  45. Avoiding an Obstacle -- Trajectory walkway axis walkway axis ped 1 ped 1 ped 2 ped 2 Small look-ahead distance Large look-ahead distance

  46. Passing Through a Constriction • Groups • compress at the entrance • move nearly single file down the corridor • reform as a group as they emerge • State change: suspending Maintain Formation proxy produces smoother motion

  47. Passing Through a Constriction -- Trajectory walkway axis walkway axis Maintain Formation proxy voting Maintain Formation proxy not voting

  48. Interaction Between Pairs -- 1

  49. Interaction Between Pairs -- 2

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