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http://dspace.aiub.edu:8080/jspui/handle/123456789/2793
Title: | Potato Diseases detection using Inception-BiT with Explainable AI |
Authors: | Kabir, Md. Sayem Nadim, Md Nure Alam Tanim, Sharia Arfin Sintheia, Tasnim Sultana Tanvir, Kazi Bhuyan, Muhibul Haque |
Keywords: | Potato, Deep Learning, Transfer learning, image classification, XAI Potato, Deep Learning, Transfer learning, image classification, XAI Potato, Deep Learning, Transfer learning, image classification, XAI Potato, Deep Learning, Transfer learning, image classification, XAI Potato, Deep Learning, Transfer learning, image classification, XAI Potato, Deep Learning, Transfer learning, image classification, XAI |
Issue Date: | 6-Jun-2025 |
Publisher: | ACM |
Citation: | M. S. Kabir, M. N. A. Nadim, S. A. Tanim, T. S. Sintheia, K. Tanvir, and Muhibul Haque Bhuyan, “Potato Diseases detection using Inception-BiT with Explainable AI,” Proceedings of the 3rd International Conference on Computing Advancements (ICCA) 2024, Faculty of Science and Information Technology (FSIT), American International University-Bangladesh (AIUB), Dhaka, Bangladesh, 17-18 October 2024, pp. 874-881. Published on 6 June 2025. DOI: https://doi.org/10.1145/3723178.3723294. |
Series/Report no.: | 3; |
Abstract: | The world’s fourth-biggest food crop, potatoes, are vulnerable to diseases that may ruin harvests and food security. Without effective management, potato leaf diseases may cause 100% crop losses, costing over six billion USD annually. Pathogens, environmental variables, and bad agricultural methods may cause potato diseases which result in poor crop quality, food security, and ecological problems. Researching potato diseases improves crop yields, food security, farmer income, potato quality, and sustainable farming methods with fewer impacts on the environment. Our process uses deep learning and the Inception-BiT model to identify potato illnesses early, improving disease control, crop yields, and economic losses. Our suggested model detected potato illnesses with 98.45% accuracy on the testing dataset, possibly revolutionising early disease detection in potato cultivation. Our lightweight, versatile model integrates seamlessly, allowing both experienced and inexperienced farmers to use innovative technology to identify potato diseases swiftly and effectively. Our model may not detect all potato diseases. Still, its accuracy in identifying specific ones makes it effective in managing them, helping farmers address common potato crop threats with precision and reliability. |
Description: | This is a personal research. |
URI: | http://dspace.aiub.edu:8080/jspui/handle/123456789/2793 |
Appears in Collections: | Publications From Faculty of Engineering |
Files in This Item:
File | Description | Size | Format | |
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Draft_DSpace_Publication_Info_Upload_FE_Prof Muhibul ICCA 2024.docx | 3.41 MB | Microsoft Word XML | View/Open |
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