推荐《Computer Vision:  Models, Learning, and Inference》

可以到这儿下载 http://www.computervisionmodels.com/

另附读后感
《Computer vision:models,learning and inference》系列讨论一
http://blog.sina.com.cn/s/blog_6bbd2dd10100svyx.html
《Computer vision:models,learning and inference》系列讨论二
http://blog.sina.com.cn/s/blog_6bbd2dd10100t0ur.html

Contents

Part I: Probability
 
1. Introduction to probability
2. Probability distributions
3. Fitting probability distributions
4. The multivariate normal

Part II: Machine learning for machine vision
 
5. Learning and inference
6. Complex probability densities
7. Regression models for vision
8. Classification models for vision
 
Part III: Connecting local models

9. Graphical models
10. Directed models for images
11. Markov random fields
 
Part IV: Preprocessing
 
12. Preprocessing methods
 
Part V: Models for geometry

13. Pinhole camera model
14. Transformation models
15. Multiple cameras

Part VI: Computer vision models
 
16. Models for shape
17. Models for identity and style
18. Temporal models
19. Models for visual words

Part VI Appendices
 
A. Optimization
B. Image preprocessing and feature extraction
C. Linear algebra
D. Algorithms
Posted on 2012-04-17 00:56  定宇逻辑  阅读(3856)  评论(0编辑  收藏  举报