00:00:00
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Lecture 20: Motion and Optical Flow |
00:01:10
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Course Outline |
00:01:26
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Recap: Epipolar Geometry - Calibrated Case |
00:02:09
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Recap: Epipolar Geometry - Uncalibrated Case |
00:03:25
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Recap: The Eight-Point Algorithm |
00:05:27
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Recap: Normalized Eight-Point Algorithm |
00:07:30
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Practical Considerations |
00:15:26
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Topics of This Lecture |
00:16:37
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Video |
00:17:22
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Motion and Perceptual Organization |
00:20:41
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Uses of Motion |
00:21:26
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Motion Estimation Techniques |
00:22:46
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Topics of This Lecture |
00:22:56
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Motion Field |
00:24:02
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Motion Field and Parallax |
00:35:01
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Topics of This Lecture |
00:35:36
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Optical Flow |
00:37:01
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Apparent Motion ≠ Motion Field |
00:37:44
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Estimating Optical Flow |
00:39:58
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The Brightness Constancy Constraint |
00:47:40
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The Aperture Problem |
00:48:43
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The Barber Pole Illusion |
00:49:43
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Solving the Aperture Problem |
00:53:41
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Conditions for Solvability |
00:54:52
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Eigenvectors of AᵀA |
00:56:28
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Interpreting the Eigenvalues |
00:57:12
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Edge |
00:58:15
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Low-Texture Region |
00:58:43
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High-Texture Region |
00:59:32
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Per-Pixel Estimation Procedure |
01:00:47
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Iterative Refinement |
01:03:08
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Optical Flow: Iterative Refinement |
01:06:34
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Some Implementation Issues |
01:09:55
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Extension: Global Parametric Motion Models |
01:12:02
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Example: Affine Motion |
01:14:27
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Problem Cases in Lucas-Kanade |
01:16:29
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Dealing with Large Movements |
01:17:05
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Temporal Aliasing |
01:18:52
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Idea: Reduce the Resolution! |
01:19:55
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Coarse-to-fine Optical Flow Estimation |
01:21:30
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Dense Optical Flow |
01:23:10
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Summary |
01:25:00
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References and Further Reading |