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A Robust Iris Segmentation Algorithm Based on Pupil Region for Visible Wavelength Environments 

Fathee, Hala N.; Sahmoud, Shaaban; Abdul-Jabbar, Jassim M. (Institute of Electrical and Electronics Engineers (IEEE), 2020)
In the last decade, the research on iris biometric has received increasing attention. Most of this research targets the iris recognition scenarios in constrained or controlled conditions, where considering the unconstrained ...
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Fast Iris Segmentation Algorithm for Visible Wavelength Images Based on Multi-color Space 

Sahmoud, Shaaban; Fathee, Hale N. (Springer, 2020)
Iris recognition for eye images acquired in visible wavelength is receiving increasing attention. In visible wavelength environments, there are many factors that may cover or affect the iris region which makes the iris ...
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Detecting Suspicious Activities of Digital Trolls During the Political Crisis 

Sahmoud, Shaaban; Safi, Hayder (IEEE, 2020)
With the huge widespread and usage of social media in our life, it becomes an effective tool to share our feeling, opinions and even our political orientations when there is civil unrest or protests. As a result, there ...
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Iris Segmentation in Uncooperative and Unconstrained Environments: State-of-the-art, Datasets and Future Research Directions 

Fathee, Hala; Sahmoud, Shaaban (Elsevier, 2021)
Most of the classical iris recognition systems require cooperation from users and assume ideal conditions during iris image acquisition. In uncooperative and unconstrained environments, the performance of these classical ...
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Memory-Assisted Dynamic Multi-Objective Evolutionary Algorithm for Feature Drift Problem 

Sahmoud, Shaaban; Topçuoğlu, Haluk Rahmi (IEEE, 2020)
In this paper, we propose an enhanced feature selection algorithm able to cope with feature drift problem that may occur in data streams, where the set of relevant features change over time. We utilize a dynamic ...
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AT-ODTSA: a Dataset of Arabic Tweets for Open Domain Targeted Sentiment Analysis 

Sahmoud, Shaaban; Abudalfa, Shadi; Elmasry, Wisam (University of Bahrain, 2022)
In the field of sentiment analysis, most of research has conducted experiments on datasets collected from Twitter for manipulating a specific language. Little number of datasets has been collected for detecting sentiments ...
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A Fast Algorithm for Hunting State-Backed Twitter Trolls 

Sahmoud, Shaaban; Abdellatif, Abdelrahman; Ragheb, Youssof (Springer, 2022)
In recent years, state-backed troll accounts have been adopted extensively by many political parties, organizations, and governments to negatively influence political systems, persecute perceived opponents, and exacerbate ...
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Dynamic Multi-Objective Evolutionary Algorithms in Noisy Environments 

Sahmoud, Shaaban; Topcuoğlu, Haluk Rahmi (Elsevier, 2023)
Real-world multi-objective optimization problems encounter different types of uncertainty that may affect the quality of solutions. One common type is the stochastic noise that contaminates the objective functions. Another ...
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A New Prediction-Based Algorithm for Dynamic Multi-objective Optimization Problems 

Karkazan, Kalthoum; Topçuoğlu, Haluk Rahmi; Sahmoud, Shaaban (Springer, 2023)
The mechanism for reacting to the changes in an environ- ment when detected is the key issue that distinguishes various algorithms proposed for dynamic multi-objective optimization problems (DMOPs). The severity of ...
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What to predict from Twitter Data? 

Salemdeeb, Mohammed; Sahmoud, Shaaban (IEEE, 2023)
In the last decade, Twitter data has become one of the most valuable research sources for many areas including health, marketing, security, and politics. Researchers prefer Twitter data since it is completely public and ...
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Sahmoud, Shaaban (16)
Abdellatif, Abdelrahman (2)Topçuoğlu, Haluk Rahmi (2)Abdul-Jabbar, Jassim M. (1)Abudalfa, Shadi (1)Akar, Gökhan (1)Dik, Sümeyye Zülal (1)Elmasry, Wisam (1)Fathee, Hala (1)Fathee, Hala N. (1)... View MoreSubjectIris Segmentation (4)Sentiment Analysis (3)Change Detection (2)Iris Recognition (2)Unconstrained Environments (2)Airspace Surveillance (1)Analyzing Twitter Data (1)Arabic Tweets (1)BERT (1)Circular Hough Transform (1)... View MorePublication TypeconferenceObject (8)article (7)bookPart (1)Languageeng (16)Publication CategoryKonferans Öğesi - Uluslararası - Kurum Öğretim Elemanı (8)Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı (7)Kitap Bölümü - Uluslararası (1)Access Typeinfo:eu-repo/semantics/embargoedAccess (12)info:eu-repo/semantics/openAccess (4)Date Issued2023 (5)2020 (4)2022 (2)2024 (2)2025 (2)2021 (1)Full Text StatusWith Full Text (16)

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