从公民科学照片中对花瓣颜色进行监督分类的自动管道

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-01-16 DOI:10.1002/aps3.11505
Rachel A. Perez-Udell, Andrew T. Udell, Shu-Mei Chang
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引用次数: 2

摘要

花瓣颜色是一种重要的生态学特征,在地理范围内发现花瓣颜色的变化,特别是在分布广泛和/或开花时间短的物种中,需要大量的田野调查。我们已经开发了一种替代方法,使用Python和k-means聚类在色调饱和度值(HSV)色彩空间中分割来自公民科学知识库的图像。方法采用k-means聚类方法对样本图像中的同色像素进行聚类,生成封装花瓣颜色范围的HSV颜色空间。使用HSV值,我们的方法隔离了该范围内包含集群的照片,并将它们放入基于用户定义类别的分类方案中。结果该方法在两个物种上得到了应用:一种是连续变化范围的黄斑天竺葵(Geranium maculatum)粉紫色花瓣,另一种是白色与蓝色的亚麻(Linanthus parryae)二元分类。我们展示的结果是可重复和准确的。该方法为公民科学知识库中的彩色图像分类提供了一种灵活、稳健且易于调整的方法。通过使用颜色对图像进行分类,该管道避免了使用更传统的计算机视觉应用程序遇到的许多问题。这种方法为利用大型公民科学家数据集提供了一种工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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An automated pipeline for supervised classification of petal color from citizen science photographs

Premise

Petal color is an ecologically important trait, and uncovering color variation over a geographic range, particularly in species with large distributions and/or short bloom times, requires extensive fieldwork. We have developed an alternative method that segments images from citizen science repositories using Python and k-means clustering in the hue-saturation-value (HSV) color space.

Methods

Our method uses k-means clustering to aggregate like-color pixels in sample images to generate the HSV color space encapsulating the color range of petals. Using the HSV values, our method isolates photographs containing clusters in that range and bins them into a classification scheme based on user-defined categories.

Results

We demonstrate the application of this method using two species: one with a continuous range of variation of pink-purple petals in Geranium maculatum, and one with a binary classification of white versus blue in Linanthus parryae. We demonstrate results that are repeatable and accurate.

Discussion

This method provides a flexible, robust, and easily adjustable approach for the classification of color images from citizen science repositories. By using color to classify images, this pipeline sidesteps many of the issues encountered using more traditional computer vision applications. This approach provides a tool for making use of large citizen scientist data sets.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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