كشف أمراض الحمضيات بإستخدام الشبكة العصبية المضببة

Other Title(s)

Detection of citrus diseases using a fuzzy neural network

Joint Authors

هدى سعد طاهر
بيداء إبراهيم خليل

Source

التربية و العلم : مجلة علمية للبحوث العلمية الأساسية

Issue

Vol. 30, Issue 5 (31 May. 2021), pp.125-135, 11 p.

Publisher

University of Mosul College of Education for Pure Science

Publication Date

2021-05-31

Country of Publication

Iraq

No. of Pages

11

Main Subjects

Botany

Topics

Abstract EN

The objective is to use AI techniques to build a citrus image recognition system and to produce an integrated program that will assist plant protection professionals in determining whether the disease is infected and early detection for the purpose of taking the necessary preventive measures and reducing its spread to other plants.

In this research, the RBF and FRBF networks were used and applied to 830 images, to detect whether citrus fruits were healthy or ill.

At first, the preprocessing of these images was done, and they were reduced to 250 x 250 pixels, and the features were extracted from them using the co-occurrence matrix method (GLCM) after setting the gray level at 8 gradients and 1 pixel distance, 21 statistical features were derived, and then these features were introduced to RBF after determine the number of input layer nodes by 21 , 20 for the hidden layer and 1 node for output layer, the centers were randomly selected from the training data and the weights were also randomly selected and trained using the Pseudo Inverse method.

The RBF network was hybridized with the fuzzy logic using the FCM method, the fuzziness parameter = 2.3 was selected, and a new network called FRBF was acquired.

These networks were trained and tested in training data (660 images) and testing (170 images) for citrus fruits.

The detection rate was then calculated, and the results showed that the (FRBF) had a higher accuracy of 98.24% compared to RBF of 94.71%.

American Psychological Association (APA)

هدى سعد طاهر وبيداء إبراهيم خليل. 2021. كشف أمراض الحمضيات بإستخدام الشبكة العصبية المضببة. التربية و العلم : مجلة علمية للبحوث العلمية الأساسية،مج. 30، ع. 5، ص ص. 125-135.
https://search.emarefa.net/detail/BIM-1302562

Modern Language Association (MLA)

هدى سعد طاهر وبيداء إبراهيم خليل. كشف أمراض الحمضيات بإستخدام الشبكة العصبية المضببة. التربية و العلم : مجلة علمية للبحوث العلمية الأساسية مج. 30، ع. 5 (2021)، ص ص. 125-135.
https://search.emarefa.net/detail/BIM-1302562

American Medical Association (AMA)

هدى سعد طاهر وبيداء إبراهيم خليل. كشف أمراض الحمضيات بإستخدام الشبكة العصبية المضببة. التربية و العلم : مجلة علمية للبحوث العلمية الأساسية. 2021. مج. 30، ع. 5، ص ص. 125-135.
https://search.emarefa.net/detail/BIM-1302562

Data Type

Journal Articles

Language

Arabic

Notes

يتضمن مراجع ببليوجرافية : ص. 134-135

Record ID

BIM-1302562