Enhancing Agricultural Pest Detection with EfficientNetV2-L and Grad-CAM: A Comprehensive Approach to Sustainable Farming

Denaya Ferrari Noval Agatra(1*), Barisma Ami Cornella(2), Muhammad Muza'in(3), Muhammad Munsarif(4), Jafar Abdollahi(5), Ahmad Ilham(6)


(1) Department of Informatics, Universitas Muhammadiyah Semarang, Semarang, Indonesia
(2) Department of Informatics, Universitas Muhammadiyah Semarang, Semarang, Indonesia
(3) Department of Informatics, Universitas Muhammadiyah Semarang, Semarang, Indonesia
(4) Department of Informatics, Universitas Muhammadiyah Semarang, Semarang, Indonesia
(5) Department of Computer Engineering, Ardabil Branch, Islamic Azad University, Ardabil, Iran
(6) Department of Informatics, Universitas Muhammadiyah Semarang, Semarang, Indonesia
(*) Corresponding Author

Abstract


In modern agriculture, quickly identifying agricultural pests is essential for maintaining high crop yields and ensuring global food security. In diverse and dynamic agricultural environments, traditional pest detection methods exhibit reduced accuracy, limited scalability, and lack interpretability. In this study, EfficientNetV2-L and Grad-CAM were used to significantly enhance pest detection system performance and transparency. EfficientNetV2-L, a fast and resource-efficient model, excels particularly in computationally constrained environments. Traditional CNN models, including EfficientNetV2-L, are criticized as uninterpretable "black boxes" despite their high accuracy. To address this issue, Grad-CAM was used to generate salient maps that visually show the most influential areas of the input image in the model’s decision-making process. This combination not only provides superior pest detection accuracy but also provides actionable insights into the model’s predictions, which is an important feature for building trust among agricultural practitioners. Our experimental results show a 15% improvement in detection accuracy compared to conventional models, especially in identifying visually similar-looking pest species that are often misclassified. In addition, the enhanced interpretability provided by Grad-CAM has led to a deeper understanding of the model’s behaviour, enabling iterative adjustments and improvements that further enhance the reliability of the system. The practical implications of these findings are significant: this integrated model offers a robust solution that can be seamlessly applied to real-time agricultural monitoring systems. With the early detection and proper classification of pests, this model can be used as a more effective pest management strategy to minimize crop damage and increase agricultural productivity. This research not only advances the technological frontier of pest detection but also contributes to broader goals related to sustainable agriculture and food security. Future research will focus on expanding the applicability of this model across different agricultural contexts, improving its adaptability to different environmental conditions, and further optimizing its performance through advanced techniques such as transfer learning and ensemble methods.

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References


Bouri, M., Arslan, K. S., & Şahin, F. (2023). Climate-Smart Pest Management in Sustainable Agriculture: Promises and Challenges. Sustainability, 15(5), 4592. https://doi.org/10.3390/su15054592

Dara, S. K., Rodriguez-Saona, C., & Morrison, W. R. (2023). Editorial: Integrated pest management strategies for sustainable food production. Frontiers in Sustainable Food Systems, 7. https://doi.org/10.3389/fsufs.2023.1224604

Dong, S., Du, J., Jiao, L., Wang, F., Liu, K., Teng, Y., & Wang, R. (2022). Automatic Crop Pest Detection Oriented Multiscale Feature Fusion Approach. Insects, 13(6), 554. https://doi.org/10.3390/insects13060554

Farooq, A., Farooq, N., Akbar, H., Hassan, Z. U., & Gheewala, S. H. (2023). A Critical Review of Climate Change Impact at a Global Scale on Cereal Crop Production. Agronomy, 13(1), 162. https://doi.org/10.3390/agronomy13010162

Gholami, R., & Fakhari, N. (2017). Support Vector Machine: Principles, Parameters, and Applications. In Handbook of Neural Computation (pp. 515–535). Elsevier. https://doi.org/10.1016/B978-0-12-811318-9.00027-2

Selvaraju, R. R., Cogswell, M., Das, A., Vedantam, R., Parikh, D., & Batra, D. (2020). Grad-CAM: Visual Explanations from Deep Networks via Gradient-Based Localization. International Journal of Computer Vision, 128(2), 336–359. https://doi.org/10.1007/s11263-019-01228-7

Tan, M., & Le, Q. (2021). EfficientNetV2: Smaller Models and Faster Training. Proceedings of the 38th International Conference on Machine Learning. PMLR., 10096–10106. https://proceedings.mlr.press/v139/tan21a.html

Tugrul, B., Elfatimi, E., & Eryigit, R. (2022). Convolutional Neural Networks in Detection of Plant Leaf Diseases: A Review. Agriculture, 12(8), 1192. https://doi.org/10.3390/agriculture12081192

Turkoglu, M. (2021). COVIDetectioNet: COVID-19 diagnosis system based on X-ray images using features selected from pre-learned deep features ensemble. Applied Intelligence, 51(3), 1213–1226. https://doi.org/10.1007/s10489-020-01888-w

Wen, C., Chen, H., Ma, Z., Zhang, T., Yang, C., Su, H., & Chen, H. (2022). Pest-YOLO: A model for large-scale multi-class dense and tiny pest detection and counting. Frontiers in Plant Science, 13. https://doi.org/10.3389/fpls.2022.973985

Wu, M.-E., Wang, C.-H., & Chung, W.-H. (2017). Using trading mechanisms to investigate large futures data and their implications to market trends. Soft Computing, 21(11), 2821–2834. https://doi.org/10.1007/s00500-016-2162-6

Zhang, L., Cui, H., Sun, J., Li, Z., Wang, H., & Li, D. (2023). CLT-YOLOX: Improved YOLOX Based on Cross-Layer Transformer for Object Detection Method Regarding Insect Pest. Agronomy, 13(8), 2091. https://doi.org/10.3390/agronomy13082091

Zhao, S., Liu, J., Bai, Z., Hu, C., & Jin, Y. (2022). Crop Pest Recognition in Real Agricultural Environment Using Convolutional Neural Networks by a Parallel Attention Mechanism. Frontiers in Plant Science, 13. https://doi.org/10.3389/fpls.2022.839572


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DOI: https://doi.org/10.26714/jichi.v5i1.13959

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Journal of Intelligent Computing and Health Informatics (JICHI)
ISSN 2715-6923 (print) | 2721-9186 (online)
Organized by
Department of Informatics
Faculty of Engineering
Universitas Muhammadiyah Semarang

W : https://jurnal.unimus.ac.id/index.php/ICHI
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