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Postcalibrating RBLFs Vaibhav Vaish
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A “Really Big Light Field” 1300x1030 color images 62x56 viewpoints per slab Seven slabs of 3472 images each 24304 image light field, 96GB raw, 16GB after JPEG compression
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Acquiring Seven Slabs
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Finding Motion Between Slabs Problem: Compute the relative motion of the gantry between different slabs Algorithm: Find feature correspondences within slabs Reconstruct accurate geometry Match geometry computed from adjacent slabs
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The Pipeline Feature Detection Find Correspondences Reconstruct Geometry Manual Input For Few Images Extend to Entire Slab Match Geometry Estimate Motion For Each Slab
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Feature Correspondences
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Camera Pose wrt Gantry Camera pose known in world frame Camera motion known in gantry frame Compute gantry to world, world to camera pose Enforce planar motion constraint
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Estimating Camera-Gantry Pose s i R i R T x i – s j R j R T x j = [1 0 0 ] T Given images of a point in a row of the light field, we can estimate pose from the above equation.
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Epipolar Geometry
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Bundle Adjustment Find 3D coordinates of a point which minimize the projection error in images Initialize the minimization by stereo triangulation Use nonlinear least squares (lsqnonlin) Works well for images in a column, poorly for row of images.
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Bundle Adjustment: Results
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The Pipeline: What Worked Feature Detection Find Correspondences Reconstruct Geometry Manual Input For Few Images Extend to Entire Slab Match Geometry Estimate Motion
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… and what didn’t Feature Detection Find Correspondences Reconstruct Geometry Manual Input For Few Images Extend to Entire Slab Match Geometry Estimate Motion
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Acknowledgements Szymon Rusinkiewicz Sean Anderson Steve Marschner Billy Chen The Digital Michelangelo Team
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