تحسين ميزات مصفوفة التواجد المشترك للمستوى الرمادي باستخدام خوارزمية مستعمرة النحل الاصطناعية لتصنيف الصور ذات المحتوى النسيجي

المؤلفون

  • فتحي مفتاح عبدالرزاق البكوش قسم الهندسة الكهربائية والحاسوب، كلية الهندسة، الجامعة الأسمرية الإسلامية، زليتن، ليبيا
  • الصديق صالح سعيد محمد قسم هندسة الحاسوب، كلية الهندسة، جامعة الزيتونة، ترهونة، ليبيا
  • علي عبدالحفيظ الروياتي قسم الهندسة الإلكترونية، كلية التقنية الصناعية، مصراتة، ليبيا
  • معمر مصباح عوينات قسم علوم الحاسوب، كلية تقنية المعلومات، الجامعة الأسمرية الإسلامية، زليتن، ليبيا

DOI:

https://doi.org/10.59743/aujas.v6i5.1294

الكلمات المفتاحية:

تحسين معاملات GLCM. خوارزمية مستعمرة النحل الاصطناعية، تصنيف الصور ذات المحتوى النسيجي

الملخص

تعتبر مصفوفة التواجد المشترك للمستوى الرمادي (GLCM) واحدة من أكثر طرق تحليل واستخراج ميزات الصور ذات المحتوى النسيجي شيوعًا. يعتبر الإختيار المناسب للمعلمات في طريقة  GLCM  من المشاكل الأساسية في تحسين دقة تصنيف الصور النسيجية. الكثير من الباحثين يعتمد على طريقة التجربة لإختيار أفضل خليط من المعلمات  لطريقة استحراج الميزات GLCM، والتي تعتبر مرهقة وتستغرق وقتا طويلا. يقترح الباحثون في هذه  الورقة طريقة تحسين جديدة لإختيار معلمات GLCM بالإعتماد على خوارزمية مستعمرة النحل الاصطناعية (ABC) لتحسين التصنيف الثنائي للصور ذات الطابع النسيجي. لإختبار الطريقة الجديدة، تم إستخدام 13 من الميزات (Haralick Features) مع الشبكة العصبية متعدد الطبقات ، وبالإعتماد على  قاعدة بيانات صور النسيج UMD. أثبتت النتائج نجاح الطريقة المقترحة في إيجاد أفضل خليط  من المعاملات لطريقة  GLCM والتي تؤدي إلى أفضل أداء لدقة التصنيف الثنائي لصور النسيج.

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التنزيلات

منشور

31-12-2021

كيفية الاقتباس

البكوش ف. م. ع., محمد ا. ص. س., الروياتي ع. ع., & عوينات م. م. (2021). تحسين ميزات مصفوفة التواجد المشترك للمستوى الرمادي باستخدام خوارزمية مستعمرة النحل الاصطناعية لتصنيف الصور ذات المحتوى النسيجي. مجلة الجامعة الأسمرية, 6(5), 839–857. https://doi.org/10.59743/aujas.v6i5.1294

إصدار

القسم

هندسة الحاسوب وتقنية المعلومات