机构地区:[1]Department of Computer Engineering,Aligarh Muslim University,Aligarh,202002,India [2]College of Computer Science,King Khalid University,Abha,61413,Saudi Arabia [3]School of Computing,Gachon University,Seongnam,13120,Republic of Korea [4]Department of Computer Science and Information Systems,College of Applied Sciences,AlMaarefa University,Riyadh,13713,Saudi Arabia [5]Department of Computer Engineering and Information,College of Engineering in Wadi Alddawasir,Prince Sattam bin Abdulaziz University,Al-Kharj,16273,Saudi Arabia
出 处:《Computer Modeling in Engineering & Sciences》2025年第1期357-384,共28页工程与科学中的计算机建模(英文)
基 金:the Deanship of Scientifc Research at King Khalid University for funding this work through large group Research Project under grant number RGP2/421/45;supported via funding from Prince Sattam bin Abdulaziz University project number(PSAU/2024/R/1446);supported by theResearchers Supporting Project Number(UM-DSR-IG-2023-07)Almaarefa University,Riyadh,Saudi Arabia.;supported by the Basic Science Research Program through the National Research Foundation of Korea(NRF)funded by the Ministry of Education(No.2021R1F1A1055408).
摘 要:Machine learning(ML)is increasingly applied for medical image processing with appropriate learning paradigms.These applications include analyzing images of various organs,such as the brain,lung,eye,etc.,to identify specific flaws/diseases for diagnosis.The primary concern of ML applications is the precise selection of flexible image features for pattern detection and region classification.Most of the extracted image features are irrelevant and lead to an increase in computation time.Therefore,this article uses an analytical learning paradigm to design a Congruent Feature Selection Method to select the most relevant image features.This process trains the learning paradigm using similarity and correlation-based features over different textural intensities and pixel distributions.The similarity between the pixels over the various distribution patterns with high indexes is recommended for disease diagnosis.Later,the correlation based on intensity and distribution is analyzed to improve the feature selection congruency.Therefore,the more congruent pixels are sorted in the descending order of the selection,which identifies better regions than the distribution.Now,the learning paradigm is trained using intensity and region-based similarity to maximize the chances of selection.Therefore,the probability of feature selection,regardless of the textures and medical image patterns,is improved.This process enhances the performance of ML applications for different medical image processing.The proposed method improves the accuracy,precision,and training rate by 13.19%,10.69%,and 11.06%,respectively,compared to other models for the selected dataset.The mean error and selection time is also reduced by 12.56%and 13.56%,respectively,compared to the same models and dataset.
关 键 词:Computer vision feature selection machine learning region detection texture analysis image classification medical images
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