Colour Extraction Pipeline for Odonates using Computer Vision
arXiv cs.CV / 4/22/2026
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Key Points
- The paper presents a computer-vision pipeline that uses deep neural networks to identify and segment dragonflies and damselflies into key body parts (head, thorax, abdomen, wings) from images.
- It is designed to work with limited labeled data by training on a small annotated dataset and improving performance using pseudo-supervised refinement.
- The approach leverages open images from citizen-science platforms to segment each visible subject and generate a color palette for each body part.
- The intended outcome is to enable large-scale statistical studies linking insect morphological traits and coloration to ecological factors such as climate change, habitat loss, and geography.
- By reducing the need for costly, local annotation campaigns, the pipeline aims to support broader, more efficient biodiversity and ecosystem-health assessments.
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