Medical, aromatic, and narcotic plants classification using an artificial neural network
Other Title(s)
تصنيف النباتات الطبية و العطرية و المخدرة بإستخدام شبكة عصبية إصطناعية
Joint Authors
Abu al-Suud, Raniya A.
Nashat, Ahmad Ali
Abd al-Malik, Margrit E.
Source
Fayoum University Journal of Engineering
Issue
Vol. 4, Issue 2 (31 Dec. 2021), pp.122-137, 16 p.
Publisher
Fayoum University Faculty of Engineering
Publication Date
2021-12-31
Country of Publication
Egypt
No. of Pages
16
Main Subjects
Topics
- Human species
- Multivariate analysis
- Medicinal plants
- Xerophytes
- Aromatic plants
- Plant taxonomy
- Image segmentation
- Image processing
- Computer vision
Abstract EN
Medical, Aromatic, and Narcotic plants are a natural treasure that grows in the desert without human being interference.
They can be used in pharmaceutical industries (medicines), medical usage (medical anesthetic), perfumes industries, and cooking.
Thus, they are very useful, available, and can be utilized for the sake of human beings.
On the other hand, some of these plants are harmful to our bodies and must be strictly prohibited.
So, it is necessary to design and implement an image processing system to detect these plants.
This system can be applied by the Ministry of Agriculture and Armed Force.
After surveying deserts and taking photos of plants by a small camera attached to a drone, they can be inserted into the system to detect the type of captured plant and take action.
In this paper, an automatic computer vision system is proposed to identify six types of desert plants.
First, a nine-class collected database is prepared.
Second, an artificial neural network-based framework, which uses color, DWT, the ratio between the major and the minor axes of the plants, and Tamura statistical texture features, is employed to classify plants.
Outcomes and the results of the suggested system have competed with several techniques such as the SVM, the Naive Bayes, the KNN, the decision tree, and discriminant analysis classifiers.
Results reveal that the proposed system has the highest overall recognition rate, which is 94.3% , among other techniques.
American Psychological Association (APA)
Abd al-Malik, Margrit E.& Abu al-Suud, Raniya A.& Nashat, Ahmad Ali. 2021. Medical, aromatic, and narcotic plants classification using an artificial neural network. Fayoum University Journal of Engineering،Vol. 4, no. 2, pp.122-137.
https://search.emarefa.net/detail/BIM-1356479
Modern Language Association (MLA)
Abd al-Malik, Margrit E.…[et al.]. Medical, aromatic, and narcotic plants classification using an artificial neural network. Fayoum University Journal of Engineering Vol. 4, no. 2 (2021), pp.122-137.
https://search.emarefa.net/detail/BIM-1356479
American Medical Association (AMA)
Abd al-Malik, Margrit E.& Abu al-Suud, Raniya A.& Nashat, Ahmad Ali. Medical, aromatic, and narcotic plants classification using an artificial neural network. Fayoum University Journal of Engineering. 2021. Vol. 4, no. 2, pp.122-137.
https://search.emarefa.net/detail/BIM-1356479
Data Type
Journal Articles
Language
English
Notes
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Record ID
BIM-1356479