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Application of deep learning models for pest detection and identification

Authors

  • Ayesha Rafique

    Sir Syed University of Engineering and Technology, Karachi, Pakistan
    Author
  • Rabia Noor Enam

    Sir Syed University of Engineering and Technology, Karachi, Pakistan
    Author
  • Madiha Abbasi

    Sir Syed University of Engineering and Technology, Karachi, Pakistan
    Author
  • Noreen Akram

    Sir Syed University of Engineering and Technology, Karachi, Pakistan
    Author

DOI:

https://doi.org/10.22581/muet1982.3080

Keywords:

Deep learning, Pest Detection, Fusion, CNN, AUC, ROC

Abstract

The quality and productivity of crops are seriously threatened by insect infestations, which is the primary focus of this research. Traditional monitoring methodologies tend to be ineffective and incorrect, resulting in wasted resources and loss of money. By incorporating cutting-edge AI and deep learning technologies, this study unveils a fresh method for rapid and precisely identifying pests in agricultural settings. This research makes use of high-resolution image technologies and Convolutional Neural Networks (CNNs) to showcase the promise of deep learning models in automated pest detection. The generalizability and model performance may be improved using transfer learning techniques leading to more efficient use of available resources. Key goals of this research include extensive testing across varied pest types and environmental settings, combined with the design and refinement of a CNN model specifically engineered for accurate pest identification. The gap between traditional pest monitoring practices and data-driven procedures is filled by the suggested method which ensures a significant increase in agricultural productivity that will contribute to greater food security and overall economic prosperity. This research strengthens the influential effects on agriculture, including enhancement of pest control, increasing food security, and boosting economic expansion. To promote this cutting-edge use of deep learning in agriculture, continuous cooperation between academics, businesses, and farmers is essential.

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References

Chithambarathanu, M., and M. K. Jeyakumar. “Survey on crop pest detection using deep learning and machine learning approaches”, Multimedia Tools and Applications 82.27 (2023): 42277-42310.

Pattnaik, Gayatri, Vimal K. Shrivastava, and K. Parvathi. “Transfer learning-based framework for classification of pest in tomato plants”, Applied Artificial Intelligence 34.13 (2020): 981-993.

Santhanambika, Muthukrishnan Sakthivel, and Gopal Maheswari. “Towards food security with the Grain Shield web application for stored grain pest identification”, Journal of Stored Products Research 111 (2025): 102515.

Ngugi LC, Abelwahab M, Abo-Zahhad M. “Recent advances in image processing techniques for automated leaf pest and disease recognition–A review”. Information processing in agriculture. 2021 Mar 1;8(1):27-51.

Li W, Wang D, Li M, Gao Y, Wu J, Yang X. “Field detection of tiny pests from sticky trap images using deep learning in the agricultural greenhouse”. Computers and Electronics in Agriculture. 2021 Apr 1;183:106048.

Peirelinck T, Kazmi H, Mbuwir BV, Hermans C, Spiessens F, Suykens J, Deconinck G. “Transfer learning in demand response: A review of algorithms for data-efficient modeling and control”. Energy and AI. 2022 Jan 1;7:100126.

Sharma V, Tripathi AK, Mittal H. “Technological revolutions in smart farming: Current trends, challenges & future directions”. Computers and Electronics in Agriculture. 2022 Aug 13:107217.

He Y, Zeng H, Fan Y, Ji S, Wu J. “Application of deep learning in integrated pest management: A real-time system for detection and diagnosis of oilseed rape pests”. Mobile Information Systems. 2019 Jul 10;2019.

Ortiz AM, Outhwaite CL, Dalin C, Newbold T. “A review of the interactions between biodiversity, agriculture, climate change, and international trade: research and policy priorities”. One Earth. 2021 Jan 22;4(1):88-101.

Jain PK, Sharma N, Saba L, Paraskevas KI, Kalra MK, Johri A, Laird JR, Nicolaides AN, Suri JS. “Unseen artificial intelligence—Deep learning paradigm for segmentation of low atherosclerotic plaque in carotid ultrasound: A multicenter cardiovascular study”. Diagnostics. 2021 Dec 2;11(12):2257.

Geetharamani G, Pandian A. “Identification of plant leaf diseases using a nine-layer deep convolutional neural network”. Computers & Electrical Engineering. 2019 Jun 1;76:323-38.

Joshi, Kamaldeep, et al. “Precision diagnosis of tomato diseases for sustainable agriculture through deep learning approach with hybrid data augmentation”, Current Plant Biology 41 (2025): 100437.

Ouhami M, Hafiane A, Es-Saady Y, El Hajji M, Canals R. “Computer vision, IoT and data fusion for crop disease detection using machine learning: A survey and ongoing research”. Remote Sensing. 2021 Jun 25;13(13):2486.

Costa, Ana PO, et al. “Manufacturing process encoding through natural language processing for prediction of material properties”, Computational Materials Science 237 (2024): 112896.

Chollet F. Deep learning v jazyku Python: knihovny Keras, Tensorflow. Grada Publishing; 2019.

Vasudevan RK, Choudhary K, Mehta A, Smith R, Kusne G, Tavazza F, Vlcek L, Ziatdinov M, Kalinin SV, Hattrick-Simpers J. “Materials science in the artificial intelligence age: high-throughput library generation, machine learning, and a pathway from correlations to the underpinning physics”. MRS communications. 2019 Sep;9(3):821-38.

Upadhyay, A., Chandel, N.S., Singh, K.P. et al. “Deep learning and computer vision in plant disease detection: a comprehensive review of techniques, models, and trends in precision agriculture”. Artif Intell Rev 58, 92 (2025).

Xiong J, Yu D, Liu S, Shu L, Wang X, Liu Z. “A review of plant phenotypic image recognition technology based on deep learning”. Electronics. 2021 Jan 4;10(1):81.

Boulent J, Foucher S, Théau J, St-Charles PL. “Convolutional neural networks for the automatic identification of plant diseases”. Frontiers in plant science. 2019 Jul 23;10:941.

Zhang K, Liu X, Xu J, Yuan J, Cai W, Chen T, Wang K, Gao Y, Nie S, Xu X, Qin X. “Deep-learning models for the detection and incidence prediction of chronic kidney disease and type 2 diabetes from retinal fundus images”. Nature biomedical engineering. 2021 Jun;5(6):533-45.

Coulibaly S, Kamsu-Foguem B, Kamissoko D, Traore D. “Deep Convolution Neural Network sharing for the multi-label images classification. Machine Learning with Applications”. 2022 Dec 15;10:100422.

Kim HI, Yoo SB. “Trends in super-high-definition imaging techniques based on deep neural networks”. Mathematics. 2020 Oct 31;8(11):1907.

F. N. Iandola, S. Han, M. W. Moskewicz, K. Ashraf, W. J. Dally, and K. Keutzer, “SqueezeNet: AlexNet-level accuracy with 50X fewer parameters and <0.5 MB model size”, arXiv:1602.07360, 2016.

N. Ullah, J. A. Khan, L. A. Alharbi, A. Raza, W. Khan and I. Ahmad, “An Efficient Approach for Crops Pests Recognition and Classification Based on Novel DeepPestNet Deep Learning Model”, IEEE Access, vol. 10, pp. 73019-73032, 2022.

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Published

2025-04-09 — Updated on 2025-04-12

How to Cite

Application of deep learning models for pest detection and identification. (2025). Mehran University Research Journal of Engineering and Technology, 44(2), 117-128. https://doi.org/10.22581/muet1982.3080

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