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IJEETC 2025 Vol.14(5): 296-303
doi: 10.18178/ijeetc.14.5.296-303

Automatic Fish Classification Using Lanczos Resampling and Deep Learning

Ari Kuswantori1, Taweepol Suesut2,*, Worapanya Suthanupaphwut3, Worapong Tangsrirat2, and Navaphattra Nunak3
1. Department of Electronics Engineering, Politeknik Gajah Tunggal, Tangerang, Banten 15135, Indonesia
2. Department of Instrumentation and Control Engineering, School of Engineering, King Mongkut’s Institute of Technology Ladkrabang, Bangkok 10520, Thailand
3. Department of Food Engineering, School of Engineering, King Mongkut’s Institute of Technology Ladkrabang, Bangkok 10520, Thailand
Email: ari@poltek-gt.ac.id (A.K.), taweepol.su@kmitl.ac.th (T.S.), 67016181@kmitl.ac.th (W.S.), worapong.ta@kmitl.ac.th (W.T.), navaphattra.nu@kmitl.ac.th (N.N.)
*Corresponding author

Manuscript received May 7, 2025; revised July 11, 2025; accepted July 19, 2025

Abstract—The development of automation in the fish industry, a vital sector of the food industry, is a highly relevant and essential topic. This development is essential for boosting output and mitigating the risk of future food shortages brought on by the world’s population expansion. Automatic fish classification using computer vision has been widely developed in fish industry automation, and a lot of research on that topic has been published. However, while some research has produced promising results using complex methods, others have applied simpler approaches with less satisfactory outcomes. This study suggests a straightforward but efficient technique for differentiating between fish species by concentrating on their main characteristics, such as body form and scale patterns. To effectively support these image capturing properties, the Lanczos re-sampling technique is used in this study. Additionally, our basic deep learning model can correctly learn and identify fish species thanks to a fish picture categorization engine created using Google Teachable Machine. Utilizing the Fish-Pak dataset, a popular fish picture dataset frequently used in studies on fish species classification, the suggested approach successfully overcomes the difficulty and attains a high accuracy rate of 97.16%.

 
Index Terms—automatic fish classification, Fish-Pak dataset, Lanczos resampling, deep learning, Google Teachable Machine (GTM)

Cite: Ari Kuswantori, Taweepol Suesut, Worapanya Suthanupaphwut, Worapong Tangsrirat, and Navaphattra Nunak, "Automatic Fish Classification Using Lanczos Resampling and Deep Learning," International Journal of Electrical and Electronic Engineering & Telecommunications, Vol. 14, No. 5, pp. 296-303, 2025. doi: 10.18178/ijeetc.14.5.296-303

Copyright © 2025 by the authors. This is an open access article distributed under the Creative Commons Attribution License (CC BY 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.

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