Automated Identification of Morphological Characteristics of Three Thunnus Species Based on Different Machine Learning Algorithms

Author:

Ou Liguo1,Liu Bilin1234,Chen Xinjun1234ORCID,He Qi5,Qian Weiguo6,Zou Leilei7

Affiliation:

1. College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China

2. The Key Laboratory of Sustainable Exploitation of Oceanic Fisheries Resources, Ministry of Education, Shanghai Ocean University, Shanghai 201306, China

3. National Distant-Water Fisheries Engineering Research Center, Shanghai Ocean University, Shanghai 201306, China

4. Key Laboratory of Oceanic Fisheries Exploration, Ministry of Agriculture and Rural Affairs, Shanghai 201306, China

5. College of Information Technology, Shanghai Ocean University, Shanghai 201306, China

6. School of Fishery, Zhejiang Ocean University, Zhoushan 316022, China

7. School of Foreign Languages, Shanghai Ocean University, Shanghai 201306, China

Abstract

Tuna are economically important fish species. The automated identification of tuna species is of importance in fishery production and resource assessment in that it would facilitate the informed monitoring of tuna fishing vessels and the establishment of electronic observer systems. As morphological characteristics are important for tuna identification, this study aims to verify the performance of the automated identification of three Thunnus species through morphological characteristics based on different machine learning algorithms. Firstly, morphological outlines were visually analyzed using EFT (elliptic Fourier transform) and CNN (convolutional neural network). Then, the EFT feature data and deep feature data of the tuna outline images were extracted, and principal component analysis of the two different morphological characteristics was performed. Finally, different machine learning algorithms were used to analyze the identification performance of tuna of the same genus and different species. The experimental results showed that EFT features had the highest identification accuracy in KNN (K-nearest neighbor), with 90% for T. obesus, 90% for T. albacores, and 85% for T. alalunga. Deep features had the best identification performance in SVM (support vector machine), with 80% for T. obesus, 90% for T. albacores, and 100% for T. alalunga. Deep features were better than EFT features in identification performance. The biodiversity and intergeneric differences among tuna species can be well analyzed using these two different morphological characteristics. Machine learning algorithms open up the way for rapid near-real-time electronic observer systems in these important international fisheries.

Funder

Program on the Survey, National Key R&D Plan

Ministry of Agriculture and Rural Affairs

Shanghai Institutions of Higher Learning

Publisher

MDPI AG

Subject

Ecology,Aquatic Science,Ecology, Evolution, Behavior and Systematics

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