Gestalt principles, k-Means clustering, feature spaces, Mixture of gaussians / EM algorithm
00:00:00
|
Lecture 6: Segmentation |
00:01:24
|
Course Outline |
00:02:17
|
Recap: Chamfer Matching |
00:04:46
|
Recap: Hough Transform |
00:07:42
|
Recap: Hough Transform Polar Parametrization |
00:08:34
|
Hough Transform for Circles |
00:11:39
|
Hough Transform for Circles: unknown radius |
00:13:15
|
Hough Transform for Circles: known direction |
00:14:09
|
Hough Transform for Circles: algorithm |
00:15:50
|
Example: Detecting Circles with Hough (1) |
00:17:02
|
Example: Detecting Circles with Hough (2) |
00:19:50
|
Voting: Practical Tips |
00:22:45
|
Hough Transform: Pros and Cons |
00:25:23
|
Generalized Hough Transform |
00:26:55
|
Generalized Hough Transform: Algorithm |
00:27:59
|
Example: Generalized Hough Transform |
00:30:18
|
Application in Recognition |
00:34:34
|
Topics of This Lecture |
00:35:34
|
Examples of Grouping in Vision |
00:37:41
|
Similarity |
00:38:29
|
Proximity |
00:38:47
|
Symmetry |
00:39:51
|
Common Fate |
00:40:24
|
The Gestalt School |
00:42:59
|
Gestalt Theory |
00:44:45
|
Gestalt Factors |
00:47:32
|
Continuity through Occlusion Cues (1) |
00:48:17
|
Continuity through Occlusion Cues (2) |
00:48:52
|
The Ultimate Gestalt? |
00:49:41
|
Image Segmentation |
00:50:27
|
The Goals of Segmentation |
00:51:26
|
Topics of This Lecture |
00:51:35
|
Image Segmentation: Toy Examples |
00:54:21
|
(find cluster centers) |
00:55:55
|
Clustering |
00:57:05
|
K-Means Clustering |
00:58:43
|
Segmentation as Clustering |
01:00:36
|
K-Means Clustering: Java demo |
01:00:49
|
K-Means++ |
01:03:07
|
Feature Space: intensity |
01:03:40
|
Feature Space: color |
01:04:16
|
Feature Space: texture |
01:05:44
|
Smoothing Out Cluster Assignments |
01:08:58
|
Feature Space: intensity+position |
01:09:29
|
K-Means Clustering Results |
01:10:44
|
Summary K-Means |
01:15:46
|
Topics of This Lecture |
01:16:06
|
Probabilistic Clustering |
01:17:25
|
Mixture of Gaussians |
01:21:08
|
Expectation Maximization (EM) |
01:23:15
|
EM Algorithm |
01:25:26
|
Applications of EM |
01:26:00
|
Segmentation with EM |
01:27:00
|
Summary: Mixtures of Gaussians, EM |
01:29:27
|
Topics of This Lecture |
01:29:36
|
References and Further Reading |