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Learning Color Names for Real-World Applications

机译:为实际应用学习颜色名称

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摘要

Color names are required in real-world applications such as image retrieval and image annotation. Traditionally, they are learned from a collection of labeled color chips. These color chips are labeled with color names within a well-defined experimental setup by human test subjects. However, naming colors in real-world images differs significantly from this experimental setting. In this paper, we investigate how color names learned from color chips compare to color names learned from real-world images. To avoid hand labeling real-world images with color names, we use Google image to collect a data set. Due to the limitations of Google image, this data set contains a substantial quantity of wrongly labeled data. We propose several variants of the PLSA model to learn color names from this noisy data. Experimental results show that color names learned from real-world images significantly outperform color names learned from labeled color chips for both image retrieval and image annotation.
机译:在诸如图像检索和图像注释之类的实际应用中,需要使用颜色名称。传统上,它们是从标记的色卡集合中学习的。这些颜色芯片由人类测试对象在定义明确的实验设置中用颜色名称标记。但是,实际图像中的颜色命名与此实验设置有很大不同。在本文中,我们研究了从颜色芯片中学习到的颜色名称与从现实世界图像中学习到的颜色名称的比较。为了避免用颜色名称手工标记真实世界的图像,我们使用Google图像来收集数据集。由于Google图片的限制,此数据集包含大量错误标记的数据。我们提出PLSA模型的几种变体,以从这些嘈杂的数据中学习颜色名称。实验结果表明,从真实世界图像中学习到的颜色名称显着优于从标记颜色芯片中获取的颜色名称,无论是图像检索还是图像标注。

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