In this issue

Fish Otolith Analysis in Southeast Asia: Expanding its Taxonomic Roots to More Ecological Targets
Biology, Ecology, Fisheries, & Conservation Management of “Galunggong” or “Roundscads” (Decapterus spp.) in the Philippines: A Review
Type Six Secretion System (T6SS) in Aquatic Pathogens
Fisheries Traceability, Drivers, and Barriers to its Adoption: A Review
Abundance and Population Size Structure of the Crown-of-Thorns Seastar in Camiguin Island, Northern Mindanao
Skipjack Tuna (Katsuwonus pelamis) Otolith Developmental Stage Classification Using Deep Learning
Lernaea cyprinacea (Copepoda, Lernaeidae) Infection on Glossogobius aureus (Gobiiformes, Gobiidae) from Naujan Lake under Captive Conditions
Reproductive Biology of the Aquarium Marine Fish Abudefduf vaigiensis (Quoy & Gaimard, 1825) from Iligan Bay, Southern Philippines
Microplastic Contamination of Four Important Commercial Fish in East Coast of North Sumatera Province, Indonesia
Quantification of Histamine Concentration, Identification, and Antibiotic Resistance of Potential Histamine-Forming Bacteria in Bullet Tuna
Quantifying the Current and Future Risk of Invasiveness of the Non-native Fishes in Ramsar-listed Lake Naujan, Philippines
Climate Change Vulnerability Assessment of Milkfish Fry Fishery in Selected Sites in Argao and Bantayan, Cebu, Philippines
Reproductive Biology and Population Dynamics of Largehead Hairtail (Trichiurus lepturus Linnaeus, 1758) in Babuyan Channel, Philippines
Shading of Ponds Improves the Reproductive Performance of Female Nile Tilapia (Oreochromis niloticus L.) Breeders during Warm Months
Growth and Survival of the Tapiroid Grunter, Mesopristes cancellatus (Cuvier, 1829) in Different Salinity Levels Under Laboratory Conditions
Elevated Salinity Tolerance of Reciprocal Hybrids of Improved Brackishwater Enhanced Selected Tilapia (iBEST) Oreochromis spp.

Journal Issue Volume 31 Issue 2 Skipjack Tuna (Katsuwonus pelamis) Otolith...

Short Communication

Skipjack Tuna (Katsuwonus pelamis) Otolith Developmental Stage Classification Using Deep Learning

, Ian Val P. Delos Reyes3, Amiel Christian C. Maquiling1, Anthony John Bercades1, Custer C. Deocaris2

1 School of Graduate Studies, Mindanao State University – General Santos City 9500, South Cotabato, Philippines
2 Atomic Research Division, Philippine Nuclear Research Institute, Department of Science & Technology, Commonwealth Ave, Diliman 1101, Quezon City, Philippines
3 Institute of Computing, Davao del Norte State College, Panabo City, Davao del Norte, Philippines

Page 291-298 | Received 24 Jun 2023, Accepted 22 Jul 2024

Abstract

The Philippines is the second biggest source of skipjack tuna (Katsuwonus pelamis), contributing to the country’s economic development. However,  its sustainability faces challenges due to overfishing and a lack of proper management practices. Otoliths are important tools for managing fish stocks, but their analysis is time-consuming and requires a high level of expertise. In this paper, we explored the use of convolutional neural networks (CNNs) to recognize patterns and classify them according to developmental stages. The results showed that the CNN model achieved an accuracy of 100% in classifying otoliths by developmental stage using the RMSprop optimizer, demonstrating the potential of deep learning to provide a standardized and reliable protocol for managing fish stocks in countries like the Philippines, where there is a shortage of trained fish experts. This study provides an innovative approach to guide future efforts in conserving fish populations and promoting sustainable fishing practices.


Keywords: Artificial intelligence, convolutionalneural networks, fish development stageclassification, sustainable fisheries management