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Modeling human judgment of digital imagery for multimedia retrieval

journal contribution
posted on 2024-11-01, 04:19 authored by Timo Volkmer, James Thom, Seyed Tahaghoghi
The application of machine learning techniques to image and video search has been shown to boost the performance of multimedia retrieval systems, and promises to lead to more generalized semantic search approaches. In particular, the availability of large training collections allows model-driven search using a substantial number of semantic concepts. The training collections are obtained in a manual annotation process where human raters review images and assign predefined semantic concept labels. Besides being prone to human error, manual image annotation is biased by the view of the individual annotator because visual information almost always leaves room for ambiguity. Ideally, several independent judgments are obtained per image, and the inter-rater agreement is assessed. While disagreement between ratings bears valuable information on the annotation quality, it complicates the task of clearly classifying rated images based on multiple judgments. In the absence of a gold standard, evaluating multiple judgments and resolving disagreement between raters is not trivial. In this paper, we present an approach using latent structure analysis to solve this problem. We apply latent class modeling to the annotation data collected during the TRECVID 2005 Annotation Forum, and demonstrate how to use this statistic to clearly classify each image on the basis of varying numbers of ratings. We use latent class modeling to quantify the annotation quality and discuss the results in comparison with the well-known Kappa inter-rater agreement measure.

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    ISSN - Is published in 15209210

Journal

IEEE Transactions On Multimedia

Volume

9

Issue

5

Start page

967

End page

974

Total pages

8

Publisher

IEEE

Place published

Piscataway

Language

English

Copyright

© 2007 IEEE

Former Identifier

2006005844

Esploro creation date

2020-06-22

Fedora creation date

2009-02-27

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