IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS

The increasing number of image collections makes image search engines increasingly needed to efficiently search for images in large image collections. Image collections that have descriptive text can utilize the descriptive text to be used in textbased search engines, but for text-free image collect...

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Main Author: RIFA’I - NIM : 13513073, WIWIT
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/31676
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:31676
spelling id-itb.:316762018-10-02T09:59:23ZIMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS RIFA’I - NIM : 13513073, WIWIT Indonesia Final Project INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/31676 The increasing number of image collections makes image search engines increasingly needed to efficiently search for images in large image collections. Image collections that have descriptive text can utilize the descriptive text to be used in textbased search engines, but for text-free image collections it is necessary to use a content-based image search engine (CBIR) that is only based on visual information on the image. In CBIR, image similarity is based on features that can be extracted from images such as color, texture and shape. One of the main problems in CBIR is the semantic gap, the gap that occurs because of the limitations of extraction features in describing the expected semantics. Semantics that are used to compare the similarities of two images are very dependent on user’s perspective that tend to be subjective. Therefore, the similarity semantic of the image can vary greatly depending on the judgment and intent of the user. <br /> <br /> <br /> <br /> One approach in overcoming semantic gap is by weighting the image extraction feature. The weighting of these features determines the features that are considered more dominant in comparing image based on the intended image similarity semantic. Relevance feedback can be used to calculate the weighting of features based on feedback from users in order to get closer to the intended image similarity semantic. The relevance feedback method used in weighting calculations is Self Order Feature Reweighting. The Inverted Multi-Index is also used as an index data structure so that the image search process becomes more efficient. <br /> <br /> <br /> <br /> The test results show that the application of relevance feedback can provide increased accuracy but not too significant. The Inverted Multi-Index structure is able to increase the search speed for a small number of images retrieved. The weakness of the Inverted Multi-Index has the effect of decreasing accuracy and does not work well if the number of images taken is too much. <br /> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The increasing number of image collections makes image search engines increasingly needed to efficiently search for images in large image collections. Image collections that have descriptive text can utilize the descriptive text to be used in textbased search engines, but for text-free image collections it is necessary to use a content-based image search engine (CBIR) that is only based on visual information on the image. In CBIR, image similarity is based on features that can be extracted from images such as color, texture and shape. One of the main problems in CBIR is the semantic gap, the gap that occurs because of the limitations of extraction features in describing the expected semantics. Semantics that are used to compare the similarities of two images are very dependent on user’s perspective that tend to be subjective. Therefore, the similarity semantic of the image can vary greatly depending on the judgment and intent of the user. <br /> <br /> <br /> <br /> One approach in overcoming semantic gap is by weighting the image extraction feature. The weighting of these features determines the features that are considered more dominant in comparing image based on the intended image similarity semantic. Relevance feedback can be used to calculate the weighting of features based on feedback from users in order to get closer to the intended image similarity semantic. The relevance feedback method used in weighting calculations is Self Order Feature Reweighting. The Inverted Multi-Index is also used as an index data structure so that the image search process becomes more efficient. <br /> <br /> <br /> <br /> The test results show that the application of relevance feedback can provide increased accuracy but not too significant. The Inverted Multi-Index structure is able to increase the search speed for a small number of images retrieved. The weakness of the Inverted Multi-Index has the effect of decreasing accuracy and does not work well if the number of images taken is too much. <br />
format Final Project
author RIFA’I - NIM : 13513073, WIWIT
spellingShingle RIFA’I - NIM : 13513073, WIWIT
IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
author_facet RIFA’I - NIM : 13513073, WIWIT
author_sort RIFA’I - NIM : 13513073, WIWIT
title IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
title_short IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
title_full IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
title_fullStr IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
title_full_unstemmed IMAGE SEARCH ENGINE WITH DIFFERENT IMAGE SIMILARITY SEMANTICS
title_sort image search engine with different image similarity semantics
url https://digilib.itb.ac.id/gdl/view/31676
_version_ 1822267838759436288