论文标题
Abanicco:多标签像素分类和颜色分割的新颜色空间
ABANICCO: A New Color Space for Multi-Label Pixel Classification and Color Segmentation
论文作者
论文摘要
在任何涉及颜色图像的计算机视觉任务中,必要的步骤是根据颜色对像素进行分类并分割各个区域。但是,能够成功完成此任务的方法的开发已被证明是具有挑战性的,这主要是由于人类颜色感知,语言色彩术语和数字表示之间的差距。在本文中,我们提出了一种新颖的方法,结合了颜色理论,模糊的颜色空间和多标签系统的几何分析,以根据12个标准颜色类别(绿色,黄色,浅橙色,深橙色,红色,粉红色,紫色,紫色,紫色,紫外线,蓝色,蓝色,蓝色,棕色,棕色和中性)根据12个标准颜色类别进行自动分类。此外,我们提出了一种基于统计和颜色理论的强大,无监督,无偏见的颜色命名策略。 Abanicco在颜色分类和标准的ISCC-NBS颜色系统方面对Abanicco进行了测试,提供了准确的分类,并且可以通过人类和机器识别出标准的,易于理解的替代方案。我们希望该解决方案成为成功解决计算机视觉各个领域的无数问题的基础,例如区域表征,组织病理学分析,火灾检测,产品质量预测,对象描述和高光谱成像。
In any computer vision task involving color images, a necessary step is classifying pixels according to color and segmenting the respective areas. However, the development of methods able to successfully complete this task has proven challenging, mainly due to the gap between human color perception, linguistic color terms, and digital representation. In this paper, we propose a novel method combining geometric analysis of color theory, fuzzy color spaces, and multi-label systems for the automatic classification of pixels according to 12 standard color categories (Green, Yellow, Light Orange, Deep Orange, Red, Pink, Purple, Ultramarine, Blue, Teal, Brown, and Neutral). Moreover, we present a robust, unsupervised, unbiased strategy for color naming based on statistics and color theory. ABANICCO was tested against the state of the art in color classification and with the standarized ISCC-NBS color system, providing accurate classification and a standard, easily understandable alternative for hue naming recognizable by humans and machines. We expect this solution to become the base to successfully tackle a myriad of problems in all fields of computer vision, such as region characterization, histopathology analysis, fire detection, product quality prediction, object description, and hyperspectral imaging.