(Enter summary)
Abstract: ion ---
VIR systems differ in the level of abstraction in
which content is indexed. For example,
images may be indexed at various levels, such
as at the feature-level (e.g., color, texture, and
shape), object-level (e.g., moving foreground
object), syntax-level (e.g., video shot), and
semantic-level (e.g., image subject), and so
forth. Most automatic VIR systems aim at lowlevel
features, while the high-level indexes are
usually generated manually. Interaction
among different levels is ... (Update)
Cited by: More
Words for Pictures: analysing a corpus of art texts" - Procs International Conference
(Correct)
An Attention-Driven Model for Grouping Similar Images.. - Marques, Mayron.. (2006)
(Correct)
Journal of Visual Languages and Computing (1999) 10, 585}606 - Article No Jvlc
(Correct)
Similar documents (at the sentence level):
6.4%: Visual Information Retrieval from Large Distributed.. - Chang, Smith, Beigi.. (1997)
(Correct)
Active bibliography (related documents): More All
0.1: Next-Generation Content Representation, Creation and .. - Chang.. (1997)
(Correct)
0.1: Image Information Retrieval: An Overview of Current Research - Goodrum (2000)
(Correct)
0.1: Talking Pictures: Indexing and Representing Video with.. - Procs Th Twente
(Correct)
Similar documents based on text: More All
0.3: Learning Structured Visual Detectors From User Input At Multiple.. - Jaimes (2001)
(Correct)
0.2: Unknown - Searching The Web
(Correct)
0.2: Path properties of Brownian Motion - Peres (1999)
(Correct)
Related documents from co-citation: More All
13: Query by Image and Video Content: The QBIC System (context) - Flickner, Sawhney et al. - 1995
11: The virage image search engine: An open framework for image management (context) - Bach, Fuller et al. - 1996
8: Texture features for browsing and retrieval of image data (context) - Manjunath, Ma - 1996
BibTeX entry: (Update)
S. Chang, J.R. Smith, M. Beigi and A. Benitez. Visual Information Retrieval from Large Distributed Online Repositories. Communications of the ACM, December 1997, pp. 63-71. http://citeseer.ist.psu.edu/chang97visual.html More
@article{ chang97visual,
author = "Shih-Fu Chang and John R. Smith and Mandis Beigi and Ana Benitez",
title = "Visual information retrieval from large distributed online repositories",
journal = "Communications of the ACM",
volume = "40",
number = "12",
pages = "63--71",
year = "1997",
url = "citeseer.ist.psu.edu/chang97visual.html" }
Citations (may not include all citations):
643
Query by Image and Video Content: The QBIC System (context) - Flickner, Sawhney et al. - 1995
152
Virage image search engine: an open framework for image mana.. (context) - Bach, Fuller et al. - 1996
46
Searching for Images and Videos on the World-Wide Web
- Smith, Chang - 1997
45
Video Parsing and Browsing Using Compressed Data (context) - Zhang, Low et al. - 1995
44
An Image Database Browser that Learns from User Interaction
- Minka, Picard - 1996
39
Experiences with Selecting Search Engines Using Meta-Search
- Drelinger, Howe - 1997
27
Finding Pictures of Objects in Large Collections of Images
- Forsyth, Malik et al. - 1996
23
MetaSEEk: A Content-Based Meta Search Engine for Images
- Beigi, Benitez et al. - 1997
23
Text, Speech and Vision for Video Segmentation: The Informed.. (context) - Hauptmann, Smith - 1995
16
VideoQ --- An Automatic Content-Based Video Search System Us.. (context) - Chang, Chen et al. - 1997
15
Media Streams: An Iconic Language for Video Annotation (context) - Davis - 1993
9
Analyzing the Subject of a Picture: A Theoretical Approach (context) - Shatford - 1986
The graph only includes citing articles where the year of publication is known.
Documents on the same site (http://www.ee.columbia.edu/~sfchang/course/vis/vis-references.html):
Next-Generation Content Representation, Creation and .. - Chang.. (1997)
(Correct)
Online articles have much greater impact More about CiteSeer.IST Add search form to your site Submit documents Feedback
CiteSeer.IST - Copyright Penn State and NEC