The mosaic test: measuring the effectiveness of colour-based image retrieval

Research output: Contribution to journalArticle

View graph of relations Save citation

Open

Authors

Research units

Abstract

A variety of content-based image retrieval systems exist which enable users to perform image retrieval based on colour content - i.e., colour-based image retrieval. For the production of media for use in television and film, colour-based image retrieval is useful for retrieving specifically coloured animations, graphics or videos from large databases (by comparing user queries to the colour content of extracted key frames). It is also useful to graphic artists creating realistic computer-generated imagery (CGI). Unfortunately, current methods for evaluating colour-based image retrieval systems have 2 major drawbacks. Firstly, the relevance of images retrieved during the task cannot be measured reliably. Secondly, existing methods do not account for the creative design activity known as reflection-in-action. Consequently, the development and application of novel and potentially more effective colour-based image retrieval approaches, better supporting the large number of users creating media for use in television and film productions, is not possible as their efficacy cannot be reliably measured and compared to existing technologies. As a solution to the problem, this paper introduces the Mosaic Test. The Mosaic Test is a user-based evaluation approach in which participants complete an image mosaic of a predetermined target image, using the colour-based image retrieval system that is being evaluated. In this paper, we introduce the Mosaic Test and report on a user evaluation. The findings of the study reveal that the Mosaic Test overcomes the 2 major drawbacks associated with existing evaluation methods and does not require expert participants.

Documents

  • MosaicTest

    Rights statement: The original publication is available at www.springerlink.com

    Accepted author manuscript, 838 KB, PDF-document

Details

Original languageEnglish
Pages (from-to)695-716
Number of pages22
JournalMultimedia Tools and Applications
Volume64
Issue3
Early online date4 Jan 2012
DOIs
StatePublished - Jun 2013

Bibliographic note

The original publication is available at www.springerlink.com

    Keywords

  • content-based image retrieval, image databases, Iimage retrieval, performance evaluation, query-by-colour, query-by-sketch

DOI

Download statistics

No data available

Employable Graduates; Exploitable Research

Copy the text from this field...