An interpretable framework using foundation models for fish sex identification
Zheng Miao, Tien-Chieh Hung

TL;DR
FishProtoNet is a non-invasive, interpretable computer vision framework that accurately identifies the sex of endangered delta smelt across its life cycle, aiding conservation efforts.
Contribution
The paper introduces FishProtoNet, combining foundation models and prototype networks for interpretable, robust fish sex identification, especially in early life stages.
Findings
Achieves 74.40% accuracy at spawning stage
Achieves 81.16% accuracy at post-spawning stage
Demonstrates robustness against background noise
Abstract
Accurate sex identification in fish is vital for optimizing breeding and management strategies in aquaculture, particularly for species at the risk of extinction. However, most existing methods are invasive or stressful and may cause additional mortality, posing severe risks to threatened or endangered fish populations. To address these challenges, we propose FishProtoNet, a robust, non-invasive computer vision-based framework for sex identification of delta smelt (Hypomesus transpacificus), an endangered fish species native to California, across its full life cycle. Unlike the traditional deep learning methods, FishProtoNet provides interpretability through learned prototype representations while improving robustness by leveraging foundation models to reduce the influence of background noise. Specifically, the FishProtoNet framework consists of three key components: fish regions of…
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Taxonomy
TopicsReproductive biology and impacts on aquatic species · Identification and Quantification in Food · Fish Biology and Ecology Studies
