Fish Type and Disease Classification Using Deep Learning Model Based Customized CNN with Resnet 50 Technique

Main Article Content

Sambit Dash
Satyaswarup Ojha
Raman Kumar Muduli
Saideep Priyadarshan Patra
Ram Chandra Barik

Abstract

Aquaculture is a critical source of seafood production, addressing the global demand for fish products. Suggesting a Deep learning-based classification technique for fishes specifically Indian Major Carp (IMC) as Mrigala, Catla and Rohu is the major objective of this paper along with detecting the disease among them. This world inside hydrosphere has their own discrete living manner. Yet they are not untouched by diseases; fishes mostly affected when young carry pathogens which cause various infections naturally or due to environmental pollutants including chemical and hazardous waste. This paper proposed the classification and prediction of diseases of fishes in aquaculture using Deep Learning based customized Convolutional Neural Network with ResNet-50 model. The proposed model performance metric compared with recent state-of-art techniques. ResNet-50 classifies accurately the IMC and type of disease the fishes are suffering from.


 

Downloads

Download data is not yet available.

Article Details

How to Cite
Sambit Dash, Satyaswarup Ojha, Raman Kumar Muduli, Saideep Priyadarshan Patra, & Ram Chandra Barik. (2024). Fish Type and Disease Classification Using Deep Learning Model Based Customized CNN with Resnet 50 Technique. Journal of Advanced Zoology, 45(3), 332–43. https://doi.org/10.53555/jaz.v45i3.4194
Section
Articles
Author Biographies

Sambit Dash

Dept.  of Computer Science and Engg., C. V. Raman Global University, Odisha

Satyaswarup Ojha

Dept.  of Computer Science and Engg., C. V. Raman Global University, Odisha

Raman Kumar Muduli

Dept.  of Computer Science and Engg., C. V. Raman Global University, Odisha

Saideep Priyadarshan Patra

Dept.  of Computer Science and Engg., C. V. Raman Global University, Odisha

Ram Chandra Barik

Dept.  of Computer Science and Engg., C. V. Raman Global University, Odisha

References

Md. Jueal Mia, Rafat Bin Mahmud, Md. Safein Sadad, Hafiz Al Asad and Rafat Hossain, “An in-depth automated approach for fish disease recognition”, Journal of King Saud University - Computer and Information Sciences, Volume 34, Issue 9, 2022, pp. 7174-7183.

Md Shoaib Ahmed, Tanjim Taharat Aurpa, Md. Abul Kalam Azad, "Fish Disease Detection Using Image Based Machine Learning Technique in Aquaculture", Journal of King Saud University - Computer and Information Sciences,Volume 34, Issue 8, 2022, pp. 5170-5182,

Lopez‐Marcano, Sebastian, Eric L Jinks, Christina A. Buelow, Christopher J. Brown, Dadong Wang, Branislav Kusy, Ellen M Ditria, and Rod M. Connolly. "Automatic detection of fish and tracking of movement for ecology." Ecology and Evolution, 11, No. 12, 2021, pp.8254-8263.

Iqbal, Usama, Daoliang Li, and Muhammad Akhter. "Intelligent Diagnosis of Fish Behavior Using Deep Learning Method", Fishes, 7, No. 4, 2022, 201, pp. 1-9.

Kandimalla V, Richard M, Smith F, Quirion J, Torgo L and Whidden C, “Automated Detection, Classification and Counting of Fish in Fish Passages with Deep Learning”, Frontiers in Marine Science Volume 8, 2022, 823173, pp. 1-15.

Marrable D, Barker K, Tippaya S, Wyatt M, Bainbridge S, Stowar M and Larke J, “Accelerating Species Recognition and Labelling of Fish from Underwater Video with Machine-Assisted Deep Learning”. Frontiers in Marine Science Volume 9, 2022, pp.1-11

Cui, Suxia, Zhou, Yu, Wang, Yonghui, Zhai, Lujun, “Fish Detection Using Deep Learning”. Applied Computational Intelligence and Soft Computing, Volume 2020, 2020, pp. 1-13.

Ahsan Jalal, Ahmad Salman, Ajmal Mian, Mark Shortis, Faisal Shafait, “Fish detection and species classification in underwater environments using deep learning with temporal information”, Ecological Informatics, Volume 57, 2020, 101088.

Pauzi, S. N., M. G. Hassan, N. Yusoff, N. H. Harun, AH Abu Bakar, and B. C. Kua. "A review on image processing for fish disease detection." In Journal of Physics: Conference Series, Volume 1997, No. 1, IOP Publishing, 2021, p. 012042.

Chakravorty, Hitesh, Paul, Rituraj and Das, Prodipto., “Image Processing Technique to Detect Fish Disease”, Volume 9, Issue 2, 2015, pp. 121-131

Wang, Zhen, Haolu Liu, Guangyue Zhang, Xiao Yang, Lingmei Wen, and Wei Zhao, "Diseased Fish Detection in the Underwater Environment Using an Improved YOLOV5 Network for Intensive Aquaculture", Fishes 8, No. 3, 2023, pp. 169.

Ram Chandra Barik, Lavin A Kanuga, Lopamudra Mishra, Ankit Kumar Panda and Samarendra Nath Panda, “Spot Disease Identification using unsupervised Machine Learning based Image Segmentation with its Remedial Solution in Aquatic Fauna", Journal of Survey in Fisheries Sciences, 10 (2), 2023, pp. 912-922.