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Published byClaire Fields Modified over 9 years ago
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Chayatat Ratanasawanya Min He April 6, 2010
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Recall previous presentation The goal Progress report ◦ Image processing ◦ depth estimation ◦ Camera placement Obstacles ◦ Combine image processing and control Simulink models Idea for the next step Questions/Comments
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4 visual-servoing structures ◦ Dynamic position-based look-and-move ◦ Dynamic image-based look-and-move ◦ Position-based visual servoing (PBVS) ◦ Image-based visual servoing (IBVS) Implemented a simulation of the dynamic position-based look-and-move system. Implemented a Simulink model to locate the centroid of a ping-pong ball in image.
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Implement the system using PBVS, IBVS, or both techniques. Tasks to tackle: ◦ Image processing ◦ Depth estimation ◦ Camera placement on the helicopter model ◦ Combine image processing and control Simulink models. ◦ Jacobian matrix derivation
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Use the diameter of the ball in image to estimate the depth Depth, D Focal length F=538 pixel Center of projection Actual ball diameter d b =40mm Ball diameter on image, d img
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area63494384319923861879149211209851082975103211221075 dm92766456494438363835374039 real dis234.0284.8335.6386.4437.2488538.8589.6 Cal dis234.4282.2335.0386.0436.0487.6565.6601.9561.6608.3577.3542.1552.8
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Combining our image processing model and the control model has been a challenging task. Global variable
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exex eyey Increment in pitch and yaw angles LQR controller
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Questions/comments are welcome
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