Server selection on the World Wide Web
- 1 June 2000
- conference paper
- Published by Association for Computing Machinery (ACM)
Abstract
Significant efforts are being made to digitize rare and valuable library materials, with the goal of providing patrons and historians digital facsimiles that capture the "look and feel" of the original materials. This is often done by digitally photographing the materials and making high resolution 2D images available. The underlying assumption is that the objects are flat. However, older materials may not be flat in practice, being warped and crinkled due to decay, neglect, accident and the passing of time. In such cases, 2D imaging is insufficient to capture the "look and feel" of the original. For these materials, 3D acquisition is necessary to create a realistic facsimile. This paper outlines a technique for capturing an accurate 3D representation of library materials which can be integrated directly into current digitization setups. This will allow digitization efforts to provide patrons with more realistic digital facsimile of library materials.Keywords
This publication has 11 references indexed in Scilit:
- Comparing the performance of database selection algorithmsPublished by Association for Computing Machinery (ACM) ,1999
- Scalable collection summarization and selectionPublished by Association for Computing Machinery (ACM) ,1999
- Accessibility of information on the webNature, 1999
- A decision-theoretic approach to database selection in networked IRACM Transactions on Information Systems, 1999
- Automatic discovery of language models for text databasesPublished by Association for Computing Machinery (ACM) ,1999
- Searching the Web: a survey of EXCITE usersInternet Research, 1999
- Methods for information server selectionACM Transactions on Information Systems, 1999
- Inquirus, the NECI meta search engineComputer Networks and ISDN Systems, 1998
- Experiences with selecting search engines using metasearchACM Transactions on Information Systems, 1997
- Searching distributed collections with inference networksPublished by Association for Computing Machinery (ACM) ,1995