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组织委员会:
Prof. 朱松纯, 美国洛山矶加州大学教授.
Prof. Veronique Prinet, 中国科学院自动化研究所教授.
Prof. Xuming He, 美国伊利诺斯大学香槟分校教授.
Prof. Jian-Feng Yao, 雷恩大学教授.
美国教授的课程:
Prof. Bin Yu,Department of Statistics, University of California, Berkeley,
Prof. Ji Zhu, Department of Statistics, University of Michigan,
Prof. Chengxiang Zhai, Department of CS, University of Illinois, Urbana Champaign,
Prof. Yuguo Chen, Department of Statistics, University of Illinois, Urbana Champaign,
Prof. Song-Chun Zhu, Departments of Statistics and CS, University of California, Los Angeles.
法国教授的课程:
Prof. Bill Triggs, Laboratoire Jean Kuntzmann, Grenoble,
Prof. Ivan Laptev, Inria, Rennes,
Prof. Cordelia Schmid, Inria, LEAR Project, Alpes.
短期课程: 
第一周:(6月30日—7月4日)
Short course 1:
Machine Learning: Kernels, Boosting, Random Forest, Variable Selection
Topics: 1.Kernel Methods I
2. Kernel Methods II
3. Random Forest and Boosting
4. Clustering
5. Variable Selection
Professor Ji Zhu, University of Michigan
Short course 2:
Machine Learning: Statistical Models for Information Retrieval and Text Mining
Topics: 1. Overview of Information Retrieval Models
2. Statistical Language Models for Information Retrieval
3. Feedback in Information Retrieval
4. Contextual Probabilistic Latent Semantic Analysis
5. Applications of Topics Models in Text Mining
Professor Chengxiang Zhai, University of Illinois, Urbana Champaign
Short course 3:
Statistics: Topics on sequential Monte Carlo and Markov Chain Monte Carlo
Topics: 1. Introduction to Monte Carlo Methods
2. Sequential Importance Sampling
3. Sequential Monte Carlo for Hidden Markov Models
4. Markov Chain Monte Carlo - I
5. Markov Chain Monte Carlo - II
Professor Yuguo Chen, University of Illinois, Urbana Champaign
Short course 4:
Vision: visual recognition and human motion reconstruction
Topics: to be advised
Professor Bill Triggs, Laboratoire Jean Kuntzmann (LJK) in Grenoble
周末休假计划:
计划周末(7月5-6日)去庐山 度假。从莲花山出发,大概有3.5小时的车程。庐山因其夏季凉爽宜人的天气而闻名。
第二周:(7月7日-7月11日)
Short course 5:
Machine Learning: Topics on Sparsity
Topics: 1. Sparsity through model selection
2. Sparsity through L1 constrained L2 penalization (Lasso)
3. Theoretical results on Lasso
4. Group and hierarchical sparsity
5. Understanding the visual pathway through sparsity
Professor Bin Yu, University of California, Berkeley
Short course 6:
Vision: Image features and Object recognition (Tentative)
Topics: 1. Local features I
2. Local feautres II
3. Efficient image search
4. Category recognition I
5. Category recognition II
Professor Cordelia Schmid, Inria, LEAR Project, Alpes.
Short course 7:
Vision: human action recognition
Topics: 1. Human actions in computer vision
Why is it important, applications, ...
Why is it hard
Overview of existing methods and their focus
2. 2D, 3D structure models, motion priors,
tracking, applications in Graphics
3."Silhouette world", Active Shape Models
Motion History
4. Space-time volume representations
Action similarity, matching, alignment
5. Local methods, space-time interest points
action recognition "in the wild"
Professor Ivan Laptev, Inria, Alpes.
Short course 8:
Vision and Learning: Manifold Learning and Image Parsing
Topics: 1. Pursuing Manifolds in the Universe of Image Patches by Information Projection
2. Information Scaling and Regimes of Statistical Models of Image
3. Primal sketch: Integrating Textures and Structures
4. Active Basis Model for Object Recognition and Learning
5. Image Parsing with Data Driven Markov Chain Monte Carlo
6. Swendsen-Wang Cuts for fast MCMC computing
7. Stochastic Image Grammar and top-down/bottom-up inference
Professor Song-Chun Zhu, UCLA
合作单位:
National Science Foundation, USA,
PRA(Sino-French Advanced Research Project),
LIAMA (Sino-french lab, Inst. Of Automation), CAS,
Lotus Hill Institute,
Center for Statistics Science, AMSS, CAS of China,
The Virtual Center for U-China Collaboration among Statisticians.
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