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| Theodor G Wyeld, Robert M Colomb, "Using the Amazon Metric to Construct an Image Database based on what people do, not what they say.," 2010 14th International Conference Information Visualisation, pp. 74-79, Tenth International Conference on Information Visualisation (IV'06), 2006. | |||
| BibTex | x | ||
| @article{ 10.1109/IV.2006.118, author = {Theodor G Wyeld and Robert M Colomb}, title = {Using the Amazon Metric to Construct an Image Database based on what people do, not what they say.}, journal ={2010 14th International Conference Information Visualisation}, volume = {0}, year = {2006}, issn = {1550-6037}, pages = {74-79}, doi = {http://doi.ieeecomputersociety.org/10.1109/IV.2006.118}, publisher = {IEEE Computer Society}, address = {Los Alamitos, CA, USA}, } | |||
| RefWorks Procite/RefMan/Endnote | x | ||
| TY - CONF JO - 2010 14th International Conference Information Visualisation TI - Using the Amazon Metric to Construct an Image Database based on what people do, not what they say. SN - 1550-6037 SP74 EP79 A1 - Theodor G Wyeld, A1 - Robert M Colomb, PY - 2006 KW - null VL - 0 JA - 2010 14th International Conference Information Visualisation ER - | |||
Current image database metadata schemas require users to adopt a specific text-based vocabulary. Textbased metadata is good for searching but not for browsing. Existing image-based search facilities, on the other hand, are highly specialised and so suffer similar problems. Wexelblat?s semantic dimensional spatial visualisation schemas go some way towards addressing this problem by making both searching and browsing more accessible to the user in a single interface. But the question of how and what initial metadata to enter a database remains.
Different people see different things in an image and will organise a collection in equally diverse ways. However, we can find some similarity across groups of users regardless of their reasoning. For example, a search on Amozon.com returns other products also, based on an averaging of how users navigate the database. In this paper we report on applying this concept to a set of images for which we have visualised them using traditional methods and the Amazon.com method. We report on the findings of this comparative investigation in a case study setting involving a group of randomly selected participants. We conclude with the recommendation that in combination, the traditional and averaging methods would provide an enhancement to current database visualisation, searching, and browsing facilities.
