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arxiv: 2407.08027 · v2 · pith:NFBJ5YHJ · submitted 2024-07-10 · cs.CV

Fish-Vista: A Multi-Purpose Dataset for Understanding & Identification of Traits from Images

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classification cs.CV
keywords imagestraitsdatasetfish-vistaspeciestaskstraitvisual
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We introduce Fish-Visual Trait Analysis (Fish-Vista), the first organismal image dataset designed for the analysis of visual traits of aquatic species directly from images using problem formulations in computer vision. Fish-Vista contains 69,126 annotated images spanning 4,154 fish species, curated and organized to serve three downstream tasks of species classification, trait identification, and trait segmentation. Our work makes two key contributions. First, we perform a fully reproducible data processing pipeline to process images sourced from various museum collections. We annotate these images with carefully curated labels from biological databases and manual annotations to create an AI-ready dataset of visual traits, contributing to the advancement of AI in biodiversity science. Second, our proposed downstream tasks offer fertile grounds for novel computer vision research in addressing a variety of challenges such as long-tailed distributions, out-of-distribution generalization, learning with weak labels, explainable AI, and segmenting small objects. We benchmark the performance of several existing methods for our proposed tasks to expose future research opportunities in AI for biodiversity science problems involving visual traits.

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  1. Label-efficient underwater species classification with logistic regression on frozen foundation model embeddings

    cs.CV 2026-03 accept novelty 4.0

    Logistic regression on frozen DINOv3 features achieves 88.5% macro F1 on the AQUA20 marine species benchmark, matching end-to-end supervised models with only 6% of the labels.