More about HKUST
Active Co-Analysis of a Set of Shapes
************************************************************************ Joint Seminars by Dr. Yunhai WANG and Dr. Liangliang NAN Date: Monday, 24 September 2012 Venue: Lecture Theatre F (near lifts 25/26), HKUST ************************************************************************ Speaker: Dr. Yunhai WANG Shenzhen Institutes of Advanced Technology Shenzhen, China Title: "Active Co-Analysis of a Set of Shapes" Time: 4:00pm - 4:30pm Abstract: Unsupervised co-analysis of a set of shapes is a difficult problem since the geometry of the shapes alone cannot always fully describe the semantics of the shape parts. In this paper, we propose a semi-supervised learning method where the user actively assists in the co-analysis by iteratively providing inputs that progressively constrain the system. We introduce a novel constrained clustering method based on a spring system which embeds elements to better respect their inter-distances in feature space together with the user given set of constraints. We also present an active learning method that suggests to the user where his input is likely to be the most effective in refining the results. We show that each single pair of constraints affects many relations across the set. Thus, the method requires only a sparse set of constraints to quickly converge toward a consistent and error-free semantic labeling of the set. ********************* Biography: Dr. Yunhai Wang is an assistant Professor in Shenzhen Institutes of Advanced Technology, Shenzhen, China. He received his Ph.D. degree from Supercomputing Center, Chinese Academy of Sciences in 2011. His research deals with the development of visualization and computer graphics techniques that help people see and understand the data. He is particularly interested in developing machine learning algorithms for data visualization and shape analysis.