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Can computers match human perception?
If you can write a formula for it, computers can excel Computer vision can’t solve the whole problem (yet), so breaks it down into pieces. Many of the pieces have important applications.
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Successes Computer vision algorithms rival humans
(from class discussion) aligning images face morphing (Conan) super-res, filling in hole, inpainting face recognition with very busy images, volume texture synthesis shape reconstruction? navigation? perception biases, optical illusion pattern matching autostitch, 3D shape recon, image search, scissors
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Challenges CV still far behind (from class discussion)
image understanding segmentation 3D shape computers can’t drive? making good photographs (composition) recognition, tracking, segmentation, scene understanding, motion
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Directions: Sensors and Imaging
Columbia’s Omnicam Stanford multicamera array HDR, multispectral imaging, high frame-rate, res
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Directions: Detection and Retrieval
Video Google Real-time faces (Viola/Jones)
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Directions: Vision and Learning
Fergus, Perona, and Zisserman, CVPR 2003
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Directions: Capturing Humans
Allen et al., Space of Human Body Shapes Zhang et al., Spacetime Faces
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Directions: Scene Reconstruction
Debevec et al., Facade
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