Implementing Relevance Feedback for Content-Based Medical Image Retrieval

Content-based image medical retrieval (CBMIR) is a technique for retrieving medical images on the basis of automatically derived image features such as colour, texture and shape. There are many applications of CBMIR, such as teaching, research, diagnosis and electronic patient records. The retrieval...

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Main Author: Ali Ahmed
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9078796/
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spelling doaj-8eab233b0b334bedacce9af6f4fac9e22021-03-30T02:40:38ZengIEEEIEEE Access2169-35362020-01-018799697997610.1109/ACCESS.2020.29905579078796Implementing Relevance Feedback for Content-Based Medical Image RetrievalAli Ahmed0https://orcid.org/0000-0002-8944-8922Faculty of Computing and Information Technology, King Abdulaziz University–Rabigh, Rabigh, Saudi ArabiaContent-based image medical retrieval (CBMIR) is a technique for retrieving medical images on the basis of automatically derived image features such as colour, texture and shape. There are many applications of CBMIR, such as teaching, research, diagnosis and electronic patient records. The retrieval performance of a CBMIR system depends mainly on the representation of image features, which researchers have studied extensively for decades. Although a number of methods and approaches have been suggested, it remains one of the most challenging problems in current (CBMIR) studies, largely due to the well-known “semantic gap” issue that exists between machine-captured low-level image features and human-perceived high-level semantic concepts. There have been many techniques proposed to bridge this gap. This study proposes a novel relevance feedback retrieval method (RFRM) for CBMIR. The feedback implemented here is based on voting values performed by each class in the image repository. Here, eighteen using colour moments and GLCM texture features were extracted to represent each image and eight common similarity coefficients were used as similarity measures. After briefly researching using a single random image query, the top images retrieved from each class are used as voters to select the most effective similarity coefficient that will be used for the final searching process. Our proposed method is implemented on the Kvasir dataset, which has 4,000 images divided into eight classes and was recently widely used for gastrointestinal disease detection. Intensive statistical analysis of the results shows that our proposed RFRM method has the best performance for enhancing both recall and precision when it uses any group of similarity coefficients.https://ieeexplore.ieee.org/document/9078796/Content-based image retrievalfeature extractionvoting methodrelevance feedback
collection DOAJ
language English
format Article
sources DOAJ
author Ali Ahmed
spellingShingle Ali Ahmed
Implementing Relevance Feedback for Content-Based Medical Image Retrieval
IEEE Access
Content-based image retrieval
feature extraction
voting method
relevance feedback
author_facet Ali Ahmed
author_sort Ali Ahmed
title Implementing Relevance Feedback for Content-Based Medical Image Retrieval
title_short Implementing Relevance Feedback for Content-Based Medical Image Retrieval
title_full Implementing Relevance Feedback for Content-Based Medical Image Retrieval
title_fullStr Implementing Relevance Feedback for Content-Based Medical Image Retrieval
title_full_unstemmed Implementing Relevance Feedback for Content-Based Medical Image Retrieval
title_sort implementing relevance feedback for content-based medical image retrieval
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Content-based image medical retrieval (CBMIR) is a technique for retrieving medical images on the basis of automatically derived image features such as colour, texture and shape. There are many applications of CBMIR, such as teaching, research, diagnosis and electronic patient records. The retrieval performance of a CBMIR system depends mainly on the representation of image features, which researchers have studied extensively for decades. Although a number of methods and approaches have been suggested, it remains one of the most challenging problems in current (CBMIR) studies, largely due to the well-known “semantic gap” issue that exists between machine-captured low-level image features and human-perceived high-level semantic concepts. There have been many techniques proposed to bridge this gap. This study proposes a novel relevance feedback retrieval method (RFRM) for CBMIR. The feedback implemented here is based on voting values performed by each class in the image repository. Here, eighteen using colour moments and GLCM texture features were extracted to represent each image and eight common similarity coefficients were used as similarity measures. After briefly researching using a single random image query, the top images retrieved from each class are used as voters to select the most effective similarity coefficient that will be used for the final searching process. Our proposed method is implemented on the Kvasir dataset, which has 4,000 images divided into eight classes and was recently widely used for gastrointestinal disease detection. Intensive statistical analysis of the results shows that our proposed RFRM method has the best performance for enhancing both recall and precision when it uses any group of similarity coefficients.
topic Content-based image retrieval
feature extraction
voting method
relevance feedback
url https://ieeexplore.ieee.org/document/9078796/
work_keys_str_mv AT aliahmed implementingrelevancefeedbackforcontentbasedmedicalimageretrieval
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