A Comparing between the impacts of text based indexing and folksonomy on ranking of images search via Google search engine

Authors
Shahid Chamran University of Ahvaz
Abstract
Background and Aim: The purpose of this study was to compare the impact of text based indexing and folksonomy in image retrieval via Google search engine.

Methods: This study used experimental method. The sample is 30 images extracted from the book “Gray anatomy”. The research was carried out in 4 stages; in the first stage, images were uploaded to an “Instagram” account so the images are tagged with 600 contacts. In the second stage, the images were uploaded onto 2 blogs using text-based and folksonomy indexing, respectively. In the third stage, 118 medical experts were asked to find one of the images in Google’s image search engine. Finally, in the fourth stage, the rank of the retrieved images from the 2 blogs was reviewed.

Results: Based on the findings; in descriptive analysis, the scores of retrieved images was calculated and in the inferential analysis, independent Chi2 test was used to compare the search results of two blogs. The reported difference was significant.

Conclusion: The results showed that the folksonomy improves images’ retrieval by Google search engine compared to the text-based indexing.


Keywords

Abbas pour, J. (2005). Image Indexing: Challenges & Approaches. Quarterly Journal of Knowledge Studies, 39 (44), 167-178 (Persian).
Dillon, Catherine. (2014). “Tagging one image at a time: How folksonomy affected the discovery of images”. The state university of New York publications, 36(3), 86-98.
Guy, M., & Tonkin, E. (2006). Tidying up tags. D-lib Magazine, 12(1), 1082-9873.‌
Hariri, N. & Ahmadi, S. (2014). The impact of Indexing Language on Image Ranking in Google Search Engine. Quarterly Journal of Knowledge Studies, 48 (2), 243-261 (Persian).
Mardani, A. (2009). Folksonomy: by users, for users. Journal of National Studies on Librarianship and Information Organization, 20 (3), 239-260 (Persian).
Mauta Siak, k. k. (2006). Toward user-centered indexing in digital image collections. OCLC systems & services: international digital library perspectives, 22(4): 283-293.
Menard,E. (2007). "Image indexing: how can I find a nice pair of shoes? ", Bulletin of the American society for information science & technology, 34(1), 21-25.
Norozi, Y. & soori, F. (2015). Evaluate search engines to retrieve images based on text and content-based indexing. Quarterly Journal of library and information, 1 (17), 183-205 (Persian).
Panofsky, E. (1939). The Neoplatonic Movement in Florence and North Italy. Studies in Iconology: Humanistic Themes in the Art of the Renaissance, 129-69
Rahimi, S. (2015). Common viewpoints on indexing and retrieving images on the web. Journal of National Studies on Librarianship and Information Organization, 26 (1), 1-182 (Persian).
Rahimi, S.& Farhadi, M. (2015). A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google. Research on Information Science and Public Libraries, 20 (4), 731-749 (Persian).
Rui, Y., Huang, T. S., Ortega, M., & Mehrotra, S. (1998). Relevance feedback: a power tool for interactive content-based image retrieval. IEEE Transactions on circuits and systems for video technology, 8(5), 644-655.‌
Sabzi por. (2008). The use of folksonomy in the representation of digital images: a new approach to user-indexing. Quarterly Journal of library and information, 11 (20), 143-160 (Persian).
Willy, Erric. (2011) “A cautious partnership: the growing accepetance of folksonomy as a compelement to indexing digital images and catalogs”. Faculty & staff publications- Minler library. 57.