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Mobile Vision for Autonomous…
Navigation and Reconnaissance Jay Silver Kevin Wortman Advised by Bill Ross Group 99
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Vision-aided Navigation for Off-road Robotics
ACC Testbed development and DARPA FCS-PerceptOR program Reconnaissance: Remote vision & monitoring, interactive map/video, and 3D modeling Navigation: Collision avoidance and improved position estimation Reconnaissance and navigation on limited payload platforms (UGV, UAV, etc.) Autonomous systems to support Future Combat Systems (DARPA TTO, PerceptOR) Vision systems for time-to-goal/bandwidth-constrained collision avoidance in unstructured outdoor environments (example: lightly wooded scenarios) All-terrain robotic vehicle (Ruggedized, 2 meter/sec) Digital fisheye video (180 fisheye,12bit, 60fps, Megapixel) 6-DOF IMU (134 Hz, 3 gyros + 3 accelerometers) Wireless ethernet ( standard) Onboard compute (2 Pentium IIIs) Offboard processing (Dual Pentium IV) Robotic Testbed (ACC ) Group 99 1 1
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Autonomous Navigation
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Space Variant Resolutions
I(x,y) I(r,q) Distorted depth/range perception r q } Standard Fisheye Res = constant q r Accurate depth/range perception Space Variant Res = f ( r ) Group 99
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Space Variant Resolutions
I(x,y) I(r,q) Distorted depth/range perception r q } Standard Fisheye Res = constant q r Accurate depth/range perception Space Variant Res = f ( r ) Group 99
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Space Variant Resolutions
Group 99
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Space Variant Resolutions
Resolution function is the integral of the angular shift w.r.t. eccentricity Space Variant Resolution = Approximate with sum and find a least squares best fit polynomial Group 99
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Space Variant Resolutions
Equal shifts along the radius of expansion for objects with equal range. Boundary tracking is simplified. Bird’s Eye View of Angular Shift Red = High Angular Shift Blue = Low Angular Shift Space-variant resolution function Inverse Resolution - degrees/pixel Sensor limit Eccentricity - degrees Group 99
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Space Variant Resolutions
Fixed resolution Space-variant resolution Group 99
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Multiple Resolutions Red = high res. Green = med res. (1/2)
Blue = low res. (1/4) Red = high res. Green = med res. (1/2) Blue = low res. (1/4) Group 99
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Group 99
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Path Finding with Probabilistic Obstacle Models
Danger Avoidance heavily rewarded Minimum time to goal heavily rewarded Group 99
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Ideal Path Finding with Probabilistic Obstacle Models
Group 99
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Reconnaissance Navigation Resolution = f ( polar radius )
Many resolutions to create new perspectives Path finding with probabilistic obstacle models Access this presentation tomorrow at: Next: Reconnaissance Group 99
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