00:00:00
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Lecture 4: Gradients & Edges |
00:00:58
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Announcements |
00:09:38
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Course Outline |
00:10:28
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Topics of This Lecture |
00:11:24
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Recap: Gaussian Smoothing |
00:12:58
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Recap: Smoothing with a Gaussian |
00:14:26
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Recap: Effect of Filtering |
00:17:51
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Recap: Low-Pass vs. High-Pass |
00:18:53
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Topics of This Lecture |
00:19:16
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Motivation: Fast Search Across Scales |
00:19:53
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Recap: Sampling and Aliasing |
00:23:00
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Recap: Resampling with Prior Smoothing |
00:26:32
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The Gaussian Pyramid |
00:28:00
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Gaussian Pyramid - Stored Information |
00:29:56
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Summary: Gaussian Pyramid |
00:35:07
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The Laplacian Pyramid |
00:40:47
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Laplacian ~ Difference of Gaussian |
00:42:57
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Topics of This Lecture |
00:43:18
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Note: Filters are Templates |
00:44:32
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Where's Waldo? |
00:48:03
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Correlation as Template Matching |
00:52:46
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Topics of This Lecture |
00:53:50
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Derivatives and Edges... |
00:55:54
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Differentiation and Convolution |
01:00:32
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Partial Derivatives of an Image |
01:03:54
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Assorted Finite Difference Filters |
01:06:54
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Image Gradient |
01:13:26
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Effect of Noise |
01:14:46
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Solution: Smooth First |
01:16:09
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Derivative Theorem of Convolution |
01:17:13
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Derivative of Gaussian Filter |
01:18:01
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Derivative of Gaussian Filters |
01:18:36
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Laplacian of Gaussian (LoG) |
01:19:51
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Summary: 2D Edge Detection Filters |
01:20:52
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Topics of This Lecture |
01:21:22
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References and Further Reading |