Improving Image Spam Detection Using a New Image Texture Features Selection

Spam is one of the problems that has plagued human societies. Although a lot of research has been done in this field, because spammers keep changing their methods like viruses, so there is always a need to provide new solutions in this field. The purpose of the research is to use image texture featu...

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Main Authors: Azam Shekari Shahrak, Seyed javad Mirabedini, Nasser Mikaeilvand, Seyed Hamid Haj Seyed Javadi
Format: Article
Language:fas
Published: Semnan University 2024-12-01
Series:مجله مدل سازی در مهندسی
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Online Access:https://modelling.semnan.ac.ir/article_9211_ba6a7e1620951d3262b1b0a0c3761a24.pdf
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author Azam Shekari Shahrak
Seyed javad Mirabedini
Nasser Mikaeilvand
Seyed Hamid Haj Seyed Javadi
author_facet Azam Shekari Shahrak
Seyed javad Mirabedini
Nasser Mikaeilvand
Seyed Hamid Haj Seyed Javadi
author_sort Azam Shekari Shahrak
collection DOAJ
description Spam is one of the problems that has plagued human societies. Although a lot of research has been done in this field, because spammers keep changing their methods like viruses, so there is always a need to provide new solutions in this field. The purpose of the research is to use image texture features to detect image spam. So far, 22 features of image texture have not been used in one place to detect image spam. In this paper, a hybrid method is used to extract key features. In the proposed hybrid method, the co-occurrence matrix of the gray level and chi-square and the threshold of changes in the value of the features are used. The steps mentioned have a great impact on the performance of the categories and improve the accuracy of detection. In the classification stage, the most widely used machine learning algorithms are used to detect image spams, and after obtaining the results of each category, the output of the algorithms used on spam and valid images is examined and compared. The obtained results show that with the help of the proposed method, good detection accuracy can be achieved compared to other methods. Among the reviewed algorithms, the neural network algorithm shows the best performance. The assumed algorithm in other articles shows a lower detection accuracy than the present article, but in the proposed method, it reaches 99.29% detection accuracy.
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publishDate 2024-12-01
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series مجله مدل سازی در مهندسی
spelling doaj-art-5952dfcf15914c8abf0ab10faeed1e042025-08-20T02:59:04ZfasSemnan Universityمجله مدل سازی در مهندسی2008-48542783-25382024-12-01227921122110.22075/jme.2024.33366.26279211Improving Image Spam Detection Using a New Image Texture Features SelectionAzam Shekari Shahrak0Seyed javad Mirabedini1Nasser Mikaeilvand2Seyed Hamid Haj Seyed Javadi3Department of Computer Engineering, Borujerd Branch, Islamic Azad University, Borujerd, IranDepartment of Computer Engineering, Central Tehran Branch, Islamic Azad University, Tehran, IranDepartment of Computer Engineering, Central Tehran Branch, Islamic Azad University, Tehran, IranDepartment of Mathematics and Computer Science, Shahed University, Tehran, IranSpam is one of the problems that has plagued human societies. Although a lot of research has been done in this field, because spammers keep changing their methods like viruses, so there is always a need to provide new solutions in this field. The purpose of the research is to use image texture features to detect image spam. So far, 22 features of image texture have not been used in one place to detect image spam. In this paper, a hybrid method is used to extract key features. In the proposed hybrid method, the co-occurrence matrix of the gray level and chi-square and the threshold of changes in the value of the features are used. The steps mentioned have a great impact on the performance of the categories and improve the accuracy of detection. In the classification stage, the most widely used machine learning algorithms are used to detect image spams, and after obtaining the results of each category, the output of the algorithms used on spam and valid images is examined and compared. The obtained results show that with the help of the proposed method, good detection accuracy can be achieved compared to other methods. Among the reviewed algorithms, the neural network algorithm shows the best performance. The assumed algorithm in other articles shows a lower detection accuracy than the present article, but in the proposed method, it reaches 99.29% detection accuracy.https://modelling.semnan.ac.ir/article_9211_ba6a7e1620951d3262b1b0a0c3761a24.pdfspamimagemachine learningneural network
spellingShingle Azam Shekari Shahrak
Seyed javad Mirabedini
Nasser Mikaeilvand
Seyed Hamid Haj Seyed Javadi
Improving Image Spam Detection Using a New Image Texture Features Selection
مجله مدل سازی در مهندسی
spam
image
machine learning
neural network
title Improving Image Spam Detection Using a New Image Texture Features Selection
title_full Improving Image Spam Detection Using a New Image Texture Features Selection
title_fullStr Improving Image Spam Detection Using a New Image Texture Features Selection
title_full_unstemmed Improving Image Spam Detection Using a New Image Texture Features Selection
title_short Improving Image Spam Detection Using a New Image Texture Features Selection
title_sort improving image spam detection using a new image texture features selection
topic spam
image
machine learning
neural network
url https://modelling.semnan.ac.ir/article_9211_ba6a7e1620951d3262b1b0a0c3761a24.pdf
work_keys_str_mv AT azamshekarishahrak improvingimagespamdetectionusinganewimagetexturefeaturesselection
AT seyedjavadmirabedini improvingimagespamdetectionusinganewimagetexturefeaturesselection
AT nassermikaeilvand improvingimagespamdetectionusinganewimagetexturefeaturesselection
AT seyedhamidhajseyedjavadi improvingimagespamdetectionusinganewimagetexturefeaturesselection