Volume 7 , Issue 1 , PP: 50-62, 2025 | Cite this article as | XML | Html | PDF | Full Length Article
Karla Zayood 1 * , Rama Asad Nadweh 2
Doi: https://doi.org/10.54216/IJAACI.070104
Recently, the combination of Deep Learning (DL) methods within the Internet of Things (IoTs) has developed in the agricultural field, especially in the domain of pest management. This study considers the implementation and development of an innovative method for Insect Detection and Classification using DL within the environment of the IoTs in agriculture. The developed system advantages advanced DL approaches for analysing images captured by IoT-enabled devices, enabling real-time identification and categorization of insect pests. By continuously incorporating these technologies, these research goals to increase the efficiency and precision of pest monitoring, finally providing to sustainable agricultural technologies and increased crop yield. This study presents an Automated Insect Detection and Classification using Pelican Optimization Algorithm with Deep Learning (AIDC-POADL) technique on Internet of Enabled Agricultural Sector. The main objective of the AIDC-POADL system is to identify and categorize various types of insects exist in the agricultural field. In the primary stage, the AIDC-POADL technique involves DenseNet-121 model to learn complex features in the input images. Also, the hyperparameter choice of the DenseNet-121 algorithm developed by the POA. At last, multilayer perceptron (MLP) model can be applied to discriminate the insects into various classes. To validate the enhanced performance of the AIDC-POADL algorithm, a series of simulations are involved. The experimental outcomes stated that the AIDC-POADL technique offers enhanced recognition results over other approaches.
Internet of Things , Insect Detection , Pelican Optimization Algorithm , Deep Learning , Agricultural region
[1] D.O. Kiobia, C.J. Mwitta, K.G. Fue, J.M. Schmidt, D.G. Riley, and G.C. Rains, "A review of successes and impeding challenges of IoT-based insect pest detection systems for estimating agroecosystem health and productivity of cotton," Sensors, vol. 23, no. 4127, 2023.
[2] G. Sambasivam and G.D. Opiyo, "A predictive machine learning application in agriculture: Cassava disease detection and classification with imbalanced dataset using convolutional neural networks," Egypt. Inform. J., vol. 22, pp. 27–34, 2021.
[3] T. Saranya, C. Deisy, S. Sridevi, and K.S.M. Anbananthen, "A comparative study of deep learning and Internet of Things for precision agriculture," Eng. Appl. Artif. Intell., vol. 122, p. 106034, 2023.
[4] C. Sullca, C. Molina, C. Rodríguez, and T. Fernández, "Diseases detection in blueberry leaves using computer vision and machine learning techniques," Int. J. Mach. Learn. Comput., vol. 9, pp. 656–661, 2019.
[5] J.W. Chen, W.J. Lin, H.J. Cheng, C.L. Hung, C.Y. Lin, and S.P. Chen, "A smartphone-based application for scale pest detection using multiple-object detection methods," Electronics, vol. 10, no. 372, 2021.
[6] H.S. Jayswal and J.P. Chaudhari, "Plant leaf disease detection and classification using conventional machine learning and deep learning," Int. J. Emerg. Technol., vol. 11, pp. 1094–1102, 2020.
[7] R. Hadipour-Rokni, E.A. Asli-Ardeh, A. Jahanbakhshi, and S. Sabzi, "Intelligent detection of citrus fruit pests using machine vision system and convolutional neural network through transfer learning technique," Comput. Biol. Med., vol. 155, p. 106611, 2023.
[8] V. Tiwari, R.C. Joshi, and M.K. Dutta, "Dense convolutional neural networks based multiclass plant disease detection and classification using leaf images," Ecol. Inform., vol. 63, p. 101289, 2021.
[9] J. Shin, M. Mahmud, T.U. Rehman, P. Ravichandran, B. Heung, and Y.K. Chang, "Trends and prospect of machine vision technology for stresses and diseases detection in precision agriculture," AgriEngineering, vol. 5, pp. 20–39, 2023.
[10] J.C. Gomes and D.L. Borges, "Insect pest image recognition: A few-shot machine learning approach including maturity stages classification," Agronomy, vol. 12, no. 1733, 2022.
[11] S. Lin, Y. Xiu, J. Kong, C. Yang, and C. Zhao, "An effective pyramid neural network based on graph-related attentions structure for fine-grained disease and pest identification in intelligent agriculture," Agriculture, vol. 13, no. 3, p. 567, 2023.
[12] Y. Wang, H. Wang, and Z. Peng, "Rice diseases detection and classification using attention-based neural network and Bayesian optimization," Expert Systems with Applications, vol. 178, p. 114770, 2021.
[13] A.B. Kathole, K.N. Vhatkar, and S.D. Patil, "IoT-enabled pest identification and classification with new meta-heuristic-based deep learning framework," Cybernetics and Systems, pp. 1–29, 2022.
[14] A. Haridasan, J. Thomas, and E.D. Raj, "Deep learning system for paddy plant disease detection and classification," Environmental Monitoring and Assessment, vol. 195, no. 1, p. 120, 2023.
[15] N.N. Ahmad Loti, M.R. Mohd Noor, and S.W. Chang, "Integrated analysis of machine learning and deep learning in chili pest and disease identification," Journal of the Science of Food and Agriculture, vol. 101, no. 9, pp. 3582–3594, 2021.
[16] R.A. Arun and S. Umamaheswari, "Effective and efficient multi-crop pest detection based on deep learning object detection models," Journal of Intelligent & Fuzzy Systems, vol. 43, no. 4, pp. 5185–5203, 2022.
[17] R.A. Hazarika, D. Kandar, and A.K. Maji, "An experimental analysis of different deep learning based models for Alzheimer’s disease classification using brain magnetic resonance images," Journal of King Saud University-Computer and Information Sciences, vol. 34, no. 10, pp. 8576–8598, 2022.
[18] N. Alamir, S. Kamel, T.F. Megahed, M. Hori, and S.M. Abdelkader, "Developing hybrid demand response technique for energy management in microgrid based on pelican optimization algorithm," Electric Power Systems Research, vol. 214, p. 108905, 2023.
[19] I. Abu-Doush, B. Ahmed, M.A. Awadallah, M.A. Al-Betar, and A.R. Rababaah, "Enhancing multilayer perceptron neural network using archive-based Harris hawks optimizer to predict gold prices," Journal of King Saud University-Computer and Information Sciences, vol. 35, no. 5, p. 101557, 2023.
[20] X. Xiaoping, "IP102: A large-scale benchmark dataset for insect pest recognition," Available online: https://github.com/xpwu95/IP102, 2023.
[21] M. Aljebreen, H.A. Mengash, F. Kouki, and A. Motwakel, "Improved artificial ecosystem optimizer with deep-learning-based insect detection and classification for agricultural sector," Sustainability, vol. 15, no. 20, p. 14770, 2023.