A non-expert organised visual database: a case study in using the Amazon metric to search images

dc.contributor.authorWyeld, Theodor G.en
dc.contributor.conferenceInformation Visualization 2007. Conference (11th : 2007 : Zurich, Switzerland)en
dc.contributor.conferenceIV '07en
dc.contributor.schoolSchool of Humanities : Mediaen
dc.date.issued2007en
dc.description.abstractIn a previous paper the notion of "using the Amazon metric to construct an image database based on what people do, not what they say" was introduced (see [1]). In that paper we described a case study setting where 20 participants were asked to arrange a collection of 60 images from most to least similar. We found they organised them in many different ways for many different reasons. Using Wexelblat's [2] semantic dimensions as axes for visualisation in conjunction with the Amazon metric we were able to identify common clusters of images according to expert and non-expert orderings. This second study describes the construction of a visual database based on the results of the first case study's non-expert participants' organising strategies and rationales. The same participants from the first study were invited to search for "remembered' images in the visual database. A better understanding was gained of their detailed reasonings behind their choices. This led to the development of a non-expert organised visual database that proved to be useful to the non-expert user. This paper concludes with some recommendations for future research into developing a non-expert, selforganising, visual, image database using multiple thesauri, based on these core studies.en
dc.identifier.citationProceedings of the International Conference on Information Visualisation, 2007; Article number 4272016:431-435en
dc.identifier.doi10.1109/IV.2007.12en
dc.identifier.issn1093-9547en
dc.identifier.urihttp://hdl.handle.net/2440/41910
dc.publisherIEEEen
dc.rights© 2008 IEEEen
dc.subject3D visual database; Amazon metric; Image database; Non-expert; Qualitativeen
dc.titleA non-expert organised visual database: a case study in using the Amazon metric to search imagesen
dc.typeConference paperen

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