一种有效的基于全局和局部颜色特征的图像检索颜色描述符

Atoany N. Fierro-Radilla, M. Nakano-Miyatake, H. Meana, M. Cedillo-Hernández, F. Garcia-Ugalde
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引用次数: 13

摘要

在基于内容的图像检索(CBIR)问题中,图像是由描述符(descriptor)的特征向量来表示的,描述符的效率对于在图像索引和检索任务中获得良好的性能至关重要。本文提出了一种有效的基于颜色描述符的算法,该算法是颜色相关图(CC)和主色(DC)的结合。直方图交集(Histogram Intersection, HI)和DC等基于颜色的描述符考虑了图像中颜色的全局分布,而CC则考虑了局部颜色分布。因此,全局和局部颜色分布的结合提供了良好的图像描述。通过其设计,所提出的描述符比CC描述符更紧凑,从而降低了计算复杂度。利用不同因素的平均检索精度(ARP)对所提描述符的有效性进行了评价,并与传统的基于颜色的描述符(如HI、CC和DC)进行了比较。在这项工作中使用的图像数据库包含500张图像,从Corel数据集中随机选择25个类别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient color descriptor based on global and local color features for image retrieval
In the context of content-based image retrieval (CBIR) problem, an image is represented by feature vectors called descriptors, whose efficiency is essential to obtain a good performance in the image indexing and retrieval tasks. In this paper, we propose an algorithm to obtain an efficient color-based descriptor, which is a combination of Color Correlogram (CC) and Dominant Color (DC). The color-based descriptors, such as Histogram Intersection (HI) and DC take into account the global distribution of color in an image, while CC takes into account the local color distribution. So the combination of global and local color distribution provides a good image description. By its design, the proposed descriptor is more compact compared with the CC descriptor, which allows reducing computational complexity. Using the Average Retrieval precision (ARP) with different factors the effectiveness of the proposed descriptor is evaluated and compared with the conventional color-based descriptors, such as HI, CC and DC. The image database used in this work contains 500 images with 25 categories randomly selected from the Corel Dataset.
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