1 / 4

ITR Collaborative: Compressed Search and Retrieval for Very Large Text and Image Repositories

ITR Collaborative: Compressed Search and Retrieval for Very Large Text and Image Repositories. Amar Mukherjee School of Electrical Engineering and Computer Science University of Central Florida Don Adjeroh Computer Science and Electrical Engineering West Virginia University, Morgantown,

thuong
Télécharger la présentation

ITR Collaborative: Compressed Search and Retrieval for Very Large Text and Image Repositories

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. ITR Collaborative: Compressed Search and Retrieval for Very Large Text and Image Repositories Amar Mukherjee School of Electrical Engineering and Computer Science University of Central Florida Don Adjeroh Computer Science and Electrical Engineering West Virginia University, Morgantown, Tim Bell Department of Computer Science University of Canterbury, New Zealand Award #s: IIS-0312724, IIS-0312484 Duration: 09/01/2003 – 08/31/2006 October 2004

  2. compressed output input sequence BWT MTF VLC BWT output Objectives, Approach & Broader Impact • Research Objectives • Search & retrieval for compressed text • Search & retrieval forlossless compressed images • Search-aware compression • Approach • keep data compressed for as much as possible • The Broader Impact • Explosive growth of text and image data • Efficient search & retrieval for text and image repositories

  3. Significant Results • Text Part • Algorithms for approximate matching on BWT text • QGREP-DFA • Searching on LZW-compressed text • Improved LZW algorithm for compressed text retrieval • MLZW (2-pass; random access; partial decoding) • Image Part • Searching on context-based predictive-coded images • search on JPEG-LS, CALIC, L-JPEG • search-aware predictive image coding • BWT-based compressed shape matching • 2D-BWT • for compression • for image search

  4. Publications • Publications from the Project • N Zhang, M Mukherjee, D Adjeroh and T Bell, “Approximate pattern matching using the Burrows Wheeler Transform”, Proc. IEEE Data Compression Conference (2003), p. 458 • Nan Zhang, Tao Tao, Ravi Vijaya Satya, & Amar Mukherjee, "Modified LZW Algorithm for Efficient Compressed Text Retrieval", Proc. Int’l Conf. on Info. Tech.: Coding and Computing, (2004), p. 224. • Tao Tao & Amar Mukherjee, "LZW Based Compressed Pattern Matching", Proc. IEEE Data Compression Conference (2004), p. 568. • Tao Tao, & Amar Mukherjee, "Compressed Pattern Matching for Predictive Lossless Image Encoding", Proc. International Conference on Distributed Multimedia Systems, (2004), p. 120. • N Zhang, A Mukherjee, D Adjeroh, & T Bell, “Pattern matching on BWT text: Inexact pattern matching”, (manuscript, to be submitted) • Related Project • NSF IDM: Compressed Domain Search for Text and Images by Sorted Contexts, 2002-2005 (Same PIs)

More Related