A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google

Purpose: The purpose of the present study is to investigate the Impact of Concept-based Image Indexing on Image Retrieval via Google. Due to the importance of images, this article focuses on the features taken into account by Google in retrieving the images. Methodology: The present study is a type...

Full description

Bibliographic Details
Main Authors: saleh rahimi, mehran farhadi
Format: Article
Language:fas
Published: Iran Public Libraries Foundation 2015-03-01
Series:تحقیقات اطلاع‌رسانی و کتابخانه‌های عمومی
Subjects:
Online Access:http://publij.ir/article-1-351-en.html
_version_ 1827585074879528960
author saleh rahimi
mehran farhadi
author_facet saleh rahimi
mehran farhadi
author_sort saleh rahimi
collection DOAJ
description Purpose: The purpose of the present study is to investigate the Impact of Concept-based Image Indexing on Image Retrieval via Google. Due to the importance of images, this article focuses on the features taken into account by Google in retrieving the images. Methodology: The present study is a type of applied research, and the research method used in it comes from quasi-experimental and technology-based methods. Findings: 900 images with concept-based characteristics were uploaded on iiproject.ir domain. Google retrieved 417 images of 900 ones that are used in this study. In 4 codes of “image title”, “Alt text”, “property”, and images with “Q code”, no images were retrieved, so the analysis is done on the rest of 5 codes, “image caption in English”, “image caption in Farsi”, “file name”, “Controlled language” and “free language”. Paying attention to these components in uploading images on websites causes Google retrieve more images. The Chi-square test for difference of retrieved images in 5 Cods is significant, and revealed that, in different codes, significantly various numbers of images were retrieved. Caption allocation in English has the best effect on retrieving images in the study sample, while the assignation of the file name is less effective in image retrieval ranking. The Kruskal-Wallis test to assess the group differences in 5 codes is significant. It means the average of group differences across 5 codes is significant. Originality/Value: This paper tries to introduce the main elements that a search engine such as Google may consider in the indexing and retrieval of images
first_indexed 2024-03-08T23:40:28Z
format Article
id doaj.art-1efe934e051f4f04a2ff88cd6508b634
institution Directory Open Access Journal
issn 2645-5730
2645-6117
language fas
last_indexed 2024-03-08T23:40:28Z
publishDate 2015-03-01
publisher Iran Public Libraries Foundation
record_format Article
series تحقیقات اطلاع‌رسانی و کتابخانه‌های عمومی
spelling doaj.art-1efe934e051f4f04a2ff88cd6508b6342023-12-14T05:12:18ZfasIran Public Libraries Foundationتحقیقات اطلاع‌رسانی و کتابخانه‌های عمومی2645-57302645-61172015-03-01204731749A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Googlesaleh rahimi0mehran farhadi1 razi university Bu-Ali Sina University Purpose: The purpose of the present study is to investigate the Impact of Concept-based Image Indexing on Image Retrieval via Google. Due to the importance of images, this article focuses on the features taken into account by Google in retrieving the images. Methodology: The present study is a type of applied research, and the research method used in it comes from quasi-experimental and technology-based methods. Findings: 900 images with concept-based characteristics were uploaded on iiproject.ir domain. Google retrieved 417 images of 900 ones that are used in this study. In 4 codes of “image title”, “Alt text”, “property”, and images with “Q code”, no images were retrieved, so the analysis is done on the rest of 5 codes, “image caption in English”, “image caption in Farsi”, “file name”, “Controlled language” and “free language”. Paying attention to these components in uploading images on websites causes Google retrieve more images. The Chi-square test for difference of retrieved images in 5 Cods is significant, and revealed that, in different codes, significantly various numbers of images were retrieved. Caption allocation in English has the best effect on retrieving images in the study sample, while the assignation of the file name is less effective in image retrieval ranking. The Kruskal-Wallis test to assess the group differences in 5 codes is significant. It means the average of group differences across 5 codes is significant. Originality/Value: This paper tries to introduce the main elements that a search engine such as Google may consider in the indexing and retrieval of imageshttp://publij.ir/article-1-351-en.htmlimage indexingimage storing and retrievalconcept-based image indexingand google search engine.
spellingShingle saleh rahimi
mehran farhadi
A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
تحقیقات اطلاع‌رسانی و کتابخانه‌های عمومی
image indexing
image storing and retrieval
concept-based image indexing
and google search engine.
title A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
title_full A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
title_fullStr A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
title_full_unstemmed A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
title_short A Survey of the Impact of Concept-Based Image Indexing on Image Retrieval via Google
title_sort survey of the impact of concept based image indexing on image retrieval via google
topic image indexing
image storing and retrieval
concept-based image indexing
and google search engine.
url http://publij.ir/article-1-351-en.html
work_keys_str_mv AT salehrahimi asurveyoftheimpactofconceptbasedimageindexingonimageretrievalviagoogle
AT mehranfarhadi asurveyoftheimpactofconceptbasedimageindexingonimageretrievalviagoogle
AT salehrahimi surveyoftheimpactofconceptbasedimageindexingonimageretrievalviagoogle
AT mehranfarhadi surveyoftheimpactofconceptbasedimageindexingonimageretrievalviagoogle