More about HKUST
Mining Near-duplicate Graph for Cluster-based Reranking of Web Video Search Results
Speaker: Dr. Hengtao SHEN University of Queensland Title: "Mining Near-duplicate Graph for Cluster-based Reranking of Web Video Search Results" Date: Wednesday, 13 January, 2010 Time: 2:00pm - 3:00pm Venue: Room 3412 (via lifts 17/18), HKUST Abstract: As the mainstream video content is moving to the Web, finding relevant videos from the Web has been in an urgent demand. Most available Web video search engines perform text-based search, which often return some noisy results on the top of the ranking list. Recently, video search reranking has been an effective mechanism to improve the initial text-based ranking list by incorporating visual consistency among the result videos. While existing methods attempt to rerank all the individual result videos, they suffer from several drawbacks. In this paper, we propose a new video reranking paradigm called cluster-based video reranking (CVR). The idea is to first construct a video near-duplicate graph representing the visual similarity relationship among videos, followed by identifying the near-duplicate clusters from the video near-duplicate graph, then rank the obtained near-duplicate clusters based on cluster properties and inter-cluster links, and finally for each ranked cluster a representative video is selected and returned. Comparing to existing methods, the new CVR ranks clusters and exhibits several advantages, including superior reranking by utilizing more reliable cluster properties, fast reranking on a small number of clusters, diverse and representative results. Particularly, we formulate the near-duplicate cluster identification as a novel maximal cohesive subgraph mining problem. By leveraging the designed cluster scoring properties indicating cluster's importance and quality, random walk is applied over the near-duplicate cluster graph to rank clusters. An extensive evaluation study proves the novelty and superiority of our proposals over existing methods. ********************* Biography: Heng Tao Shen is a Reader in School of ITEE at The University of Queensland. He obtained his BSc (with 1st class Honours) and PhD from Department of Computer Science, National University of Singapore in 2000 and 2004 respectively, then joined The University of Queensland as a Lecturer in June 2004 and Senior Lecturer in March 2007. His research interests include Multimedia/Mobile/Web Search, Database Management, P2P/Cloud Computing, etc. Heng Tao has published and served on program committees in most prestigious international publication venues of interests, such as ACM SIGMOD, ACM Multimedia, VLDB, ICDE, etc. He is the winner of CORE Australasia *Chris Wallace award* 2009 for outstanding research contribution in the field of computer science. The prize was awarded to an academic for research undertaken within a university or research institution in Australia or New Zealand for a notable breakthrough or a contribution of particular significance.