Deep Learning for Accurate Vision-based Catch Composition in Tropical Tuna Purse Seiners
Xabier Lekunberri, Ahmad Kamal, Izaro Goienetxea, Jon Ruiz, I\~naki Quincoces, Jaime Valls Miro, Ignacio Arganda-Carreras, Jose A. Fernandes-Salvador

TL;DR
This paper develops a multi-stage AI pipeline combining segmentation, tracking, and hierarchical classification to accurately identify and estimate species composition of tuna catches from electronic monitoring videos, improving over previous methods.
Contribution
It introduces a novel multi-stage AI approach with advanced segmentation and hierarchical classification for species identification in tuna fisheries, validated on real-world data.
Findings
YOLOv9-SAM2 achieved a mean average precision of 0.66
Hierarchical classification outperformed standard models in generalization
84.8% of individuals were accurately segmented and classified
Abstract
Purse seiners play a crucial role in tuna fishing, as approximately 69% of the world's tropical tuna is caught using this gear. All tuna Regional Fisheries Management Organizations have established minimum standards to use electronic monitoring (EM) in fisheries in addition to traditional observers. The EM systems produce a massive amount of video data that human analysts must process. Integrating artificial intelligence (AI) into their workflow can decrease that workload and improve the accuracy of the reports. However, species identification still poses significant challenges for AI, as achieving balanced performance across all species requires appropriate training data. Here, we quantify the difficulty experts face to distinguish bigeye tuna (BET, Thunnus Obesus) from yellowfin tuna (YFT, Thunnus Albacares) using images captured by EM systems. We found inter-expert agreements of…
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Taxonomy
TopicsWater Quality Monitoring Technologies · Marine and fisheries research · Identification and Quantification in Food
