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Locomotion of Wheeled Robots
3 wheels are sufficient and guarantee stability Differential drive (Pioneer) Car drive (Ackerman steering) Synchronous drive (B21) Omni-drive: Mecanum wheels, XR4000 [Many slides come from and Steffen Gutmann] 11/16/2018 CS225B Kurt Konolige
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Instantaneous Center of Curvature
ICC For rolling motion to occur, each wheel has to move along its y-axis 11/16/2018 CS225B Kurt Konolige
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Differential Drive Two driven wheels One passive (castor) wheel
Obot, Erratic, Pioneers… 11/16/2018 CS225B Kurt Konolige
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Differential Drive Kinematics
ICC v l R (x,y) y v r l/2 11/16/2018 x CS225B Kurt Konolige
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Differential Drive: Forward Kinematics
ICC R Compare to PR (5.9), p 127 P(t+t) For changing velocities, integrate over small dt. P(t) 11/16/2018 CS225B Kurt Konolige
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Need to deal with incremental errors
Odometry Integrating relative position information Need to deal with incremental errors 11/16/2018 CS225B Kurt Konolige
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Ackerman Drive One driven wheel Two passive wheels
Similar to front-driven cars 11/16/2018 CS225B Kurt Konolige
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Synchronous Drive All wheels are actuated synchronously by one motor
Defines robot speed All wheels are steered synchronously by 2nd motor Sets robot's heading Orientation of robot frame is always the same Not possible to control orientation of robot frame 11/16/2018 CS225B Kurt Konolige
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Mecanum Wheels y x forward v1 v2 v0 v3 v1 left v1 v2 v0 v3 v0 v2 v3
turn 11/16/2018 CS225B Kurt Konolige
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Motion planning is the ability for an agent to compute its own motions in order to achieve certain goals. All autonomous robots and digital actors should eventually have this ability [Latombe] 11/16/2018 CS225B Kurt Konolige
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Robot Motion Planning 11/16/2018 CS225B Kurt Konolige
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Goal of Motion Planning
Compute motion strategies, e.g.: Geometric paths Time-parameterized trajectories Sequence of sensor-based motion commands To achieve high-level goals, e.g.: Go into a room without colliding with obstacles Assemble/disassemble a car Explore and build map of our department Find an object (a person, the soccer ball, etc.) 11/16/2018 CS225B Kurt Konolige
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Mobile Robot Navigation
Path planning and obstacle avoidance No clear distinction, but usually: Path-planning low-frequency, time-intensive search method for global finding of a path to a goal Examples: road maps, cell decomposition Obstacle avoidance fast, reactive method with local time and space horizon Examples: Vector field histogram, dynamic window approach “Gray area” Fast methods for finding path to goal which can fail if environment contains “local minima” Example: potential field method 11/16/2018 CS225B Kurt Konolige
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Path Planning Global vs. Local Path Planning Configuration Space
Each configuration is a point in the space Obstacles are regions of the space A freespace path represents valid motion Hard – PSPACE hard Local Methods Potential field Fuzzy rules Motor schemas Vector Field Histogram Local Methods => Global Method? LAGR cul-de-sac 11/16/2018 CS225B Kurt Konolige
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Tool: Configuration Space
Articulated object (4DoF) C-Space (2D cut) 11/16/2018 CS225B Kurt Konolige
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Configuration Space of a Disc
Workspace W Configuration space C path y x Configuration = coordinates (x,y) of robot’s center Configuration space C = {(x,y)} Free space F = subset of collision-free configurations 11/16/2018 CS225B Kurt Konolige
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Workspace 11/16/2018 CS225B Kurt Konolige
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Configuration Space 11/16/2018 CS225B Kurt Konolige
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Discretization 11/16/2018 CS225B Kurt Konolige
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Dynamic Window Method [Fox et al.]
Evaluating constant curvature path in configuration space Window of values based on one-step acceleration When will the robot crash? 11/16/2018 CS225B Kurt Konolige
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Dynamic Window Method [Fox et al.]
Admissible trajectories: braking before collision 11/16/2018 CS225B Kurt Konolige
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Dynamic Window Method [Fox et al.]
Heading: achieve the goal Distance: avoid obstacles Velocity: do it fast 11/16/2018 CS225B Kurt Konolige
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Dynamic Window Method [Fox et al.]
DWA Issues Computation Evaluation function tuning: small openings Longer paths / lower acceleration Oscillation LAGR Cul-de-sac 11/16/2018 CS225B Kurt Konolige
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Vector Field Histogram [Borenstein and Koren]
Potential field method Workspace obstacles Obstacle probabilities from Cartesian histogram Polar histogram of good directions 11/16/2018 CS225B Kurt Konolige
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Vector Field Histogram [Borenstein and Koren]
Potential field method Workspace obstacles Obstacle probabilities from Cartesian histogram Polar histogram of good directions 11/16/2018 CS225B Kurt Konolige
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Vector Field Histogram [Borenstein and Koren]
Issues Width of robot, safety margin Cost function for handling tradeoffs: safety, progress, etc. Trajectory and dynamics Oscillation 11/16/2018 CS225B Kurt Konolige
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