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Data for: Segmenting biological specimens from photos to understand the evolution of UV plumage in passerine birds [He et al]

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DataCite Commons2026-03-25 更新2025-04-16 收录
下载链接:
https://orda.shef.ac.uk/articles/dataset/Data_for_Segmenting_biological_specimens_from_photos_to_understand_the_evolution_of_UV_plumage_in_passerine_birds_He_et_al_/19221699
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Dataset includes raw specimen images, ground truth masks and Deep Lab predicted masks. Also included are flat CSV files of ground truth and Deep Lab predicted coordinates.AbstractUltraviolet colouration is thought to be an important form of signalling in many bird species, yet broad insights regarding the prevalence of ultraviolet plumage colouration and the factors promoting its evolution are currently lacking. In this paper, we develop a image segmentation pipeline based on deep learning that considerably outperforms classical (i.e. non deep learning) segmentation methods, and use this to extract accurate information on whole-body plumage colouration from photographs of &gt;24,000 museum specimens covering &gt;4500 species of passerine birds. Our results demonstrate that ultraviolet reflectance, particularly as a component of other colours, is widespread across the passerine radiation but is strongly phylogenetically conserved. We also find clear evidence in support of the role of light environment in promoting the evolution of ultraviolet plumage colouration, and a weak trend towards higher ultraviolet plumage reflectance among bird species with ultraviolet rather than violet-sensitive visual systems. Overall, our study provides important broad-scale insight into an enigmatic component of avian colouration, as well as demonstrating that deep learning has considerable promise for allowing new data to be brought to bear on long-standing questions in ecology and evolution.<br>
提供机构:
The University of Sheffield
创建时间:
2022-02-23
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