Home > Published Issues > 2024 > Volume 15, No. 7, 2024 >
JAIT 2024 Vol.15(7): 862-872
doi: 10.12720/jait.15.7.862-872

Deep Image Processing Based Periodically Leaves Diseases Detection and Classification through Wireless Visual Sensors Network (WVSN)

Mazhar Noor 1, Naveed Abbas 1, Muhammad Wasim 1, Amerah Alghanim 2, Narmine ElHakim 2, and Amjad Rehman Khan 2,*
1. Department of Computer Science, Islamia College University Peshawar, Peshawar, Pakistan
2 Artificial Intelligence and Data Analytics Lab, CCIS Prince Sultan University, Riyadh, Saudi Arabia
Email: mazharnoor.std@icp.edu.pk (M.N.); naveed.abbas@icp.edu.pk (N.A.); m.wasim@icp.edu.pk (M.W.); aghanim@psu.edu.sa (A.A.); nhakim@psu.edu.sa (N.E.); arkhan2030@gmail.com (A.R.K.)
*Corresponding author

Manuscript received October 30, 2023; revised November 17, 2023; accepted February 1, 2024, published July 23, 2024.

Abstract—Apples are one of the best sources of nourishment and are packed with various nutrients, including fiber, vitamins, minerals, and antioxidants which are essential for maintaining a healthy body and reducing the risk of chronic diseases. However, many diseases attack apple plants like “Scab”, “Rust”, and “Black rot”. These diseases are responsible for the decrease in the production and cultivation of apples. Identification of these diseases at an early stage can play an important role in their control before spreading into other parts of the plant. This job is challenging, especially in leaves even through an expert’s eye and many imaging methods are applied to identify these diseases from images using machine learning algorithms. To automate the process in real-time monitoring of Apple farms, this paper presents a framework for detecting diseases in apple leaves using a Wireless Visual Sensor Network (WVSN). A WVSN utilizes Convolution Neural Networks (CNN) for cloud-based classification. The framework will periodically capture the images directly from the apple farms through wireless nodes and send the data to the cloud through a gateway for further processing where the trained model classifies the diseases accurately. We tested our proposed model on the developed dataset to benchmark it against other state-of-the-art studies and subsequently deployed it in Apple farms to ensure the best results. The proposed framework gained an accuracy of 96.96% on the developed dataset and 95.1% in the real time with Apple farm images.
 
Keywords—agriculture, apple leaves diseases, real-time monitoring, wireless visual sensors network, rural economy, AlexNet

Cite: Mazhar Noor, Naveed Abbas, Muhammad Wasim, Amerah Alghanim, Narmine ElHakim, and Amjad Rehman Khan, "Deep Image Processing Based Periodically Leaves Diseases Detection and Classification through Wireless Visual Sensors Network (WVSN)," Journal of Advances in Information Technology, Vol. 15, No. 7, pp. 862-872, 2024.

Copyright © 2024 by the authors. This is an open access article distributed under the Creative Commons Attribution License (CC BY-NC-ND 4.0), which permits use, distribution and reproduction in any medium, provided that the article is properly cited, the use is non-commercial and no modifications or adaptations are made.