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Dr. mohamed loey ramadan :: Publications:

Title:
Deep Learning in Plant Diseases Detection for Agricultural Crops: A Survey
Authors: Mohammed Loey, Ahmed ElSawy, Mohamed Afify
Year: 2020
Keywords: Not Available
Journal: International Journal of Service Science, Management, Engineering, and Technology (IJSSMET)
Volume: 11
Issue: 2
Pages: 18
Publisher: igi
Local/International: International
Paper Link:
Full paper mohamed loey ramadan_Deep-Learning-in-Plant-Diseases-Detection-for-Agricultural-Crops_-A-Survey.pdf
Supplementary materials Not Available
Abstract:

eep learning has brought a huge improvement in the area of machine learning in general and most particularly in computer vision. The advancements of deep learning have been applied to various domains leading to tremendous achievements in the areas of machine learning and computer vision. Only recent works have introduced applying deep learning to the field of using computers in agriculture. The need for food production and food plants is of utmost importance for human society to meet the growing demands of an increased population. Automatic plant disease detection using plant images was originally tackled using traditional machine learning and image processing approaches resulting in limited accuracy results and a limited scope. Using deep learning in plant disease detection made it possible to produce higher prediction accuracies as well as broadened the scope of detected diseases and plant species considered. This article presents a survey of research papers that presented the use of deep learning in plant disease detection, and analyzes them in terms of the dataset used, models employed, and overall performance achieved.

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