Boosting, AdaBoost, Viola-Jones Detector
00:00:00
|
Lecture 11: Sliding-Window based Object Detection II |
00:00:24
|
Course Outline |
00:01:12
|
Topics of This Lecture |
00:01:50
|
Recap: Sliding-Window Object Detection |
00:04:40
|
Recap: Support Vector Machines (SVM) |
00:13:56
|
Recap: Non-Linear SVMs |
00:16:56
|
Recap: Gradient-based Representations |
00:18:41
|
Recap: HOG Descriptor Processing Chain |
00:21:33
|
Recap: Pedestrian Detection with HOG |
00:22:27
|
Recap: Non-Maximum Suppression |
00:23:13
|
Applications: Mobile Robot Navigation |
00:31:24
|
Classifier Construction: Many Choices... |
00:31:40
|
Boosting |
00:33:48
|
AdaBoost: Intuition |
00:36:31
|
AdaBoost - Formalization |
00:38:51
|
AdaBoost: Detailed Training Algorithm |
00:44:00
|
AdaBoost: Recognition |
00:47:08
|
Example: Face Detection |
00:48:49
|
Feature extraction |
00:54:29
|
Example |
00:55:36
|
Large Library of Filters |
00:58:34
|
AdaBoost for Feature+Classifier Selection |
01:03:46
|
AdaBoost for Efficient Feature Selection |
01:05:24
|
Cascading Classifiers for Detection |
01:09:28
|
Cascading Classifiers |
01:11:04
|
Viola-Jones Face Detector: Summary |
01:13:11
|
Cascading Classifiers |
01:14:45
|
Viola-Jones Face Detector: Summary |
01:18:02
|
Practical Issue: Bootstrapping |
01:20:43
|
Viola-Jones Face Detector: Results |
01:22:21
|
You Can Try It At Home... |
01:23:05
|
Example Application |
01:25:01
|
Summary: Sliding-Windows |
01:26:44
|
Feature Computation Trade-Off |
01:28:22
|
What Slows Down HOG (CUDA Implem.) |
01:29:30
|
References and Further Reading |