Region-Based Image Retrieval with High-Level Semantic Color Names

Y. Liu, Dengsheng Zhang, Guojun Lu, Wei-Ying Ma
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引用次数: 69

Abstract

Performance of traditional content-based image retrieval systems is far from user’s expectation due to the ‘semantic gap’ between low-level visual features and the richness of human semantics. In attempt to reduce the ‘semantic gap’, this paper introduces a region-based image retrieval system with high-level semantic color names. In this system, database images are segmented into color-texture homogeneous regions. For each region, we define a color name as that used in our daily life. In the retrieval process, images containing regions of same color name as that of the query are selected as candidates. These candidate images are further ranked based on their color and texture features. In this way, the system reduces the ‘semantic gap’ between numerical image features and the rich semantics in the user’s mind. Experimental results show that the proposed system provides promising retrieval results with few features used.
基于区域的高级语义颜色名称图像检索
传统的基于内容的图像检索系统由于低级视觉特征与丰富的人类语义之间的“语义差距”,其性能远远达不到用户的期望。为了减少“语义差距”,本文介绍了一种基于区域的高级语义颜色名称图像检索系统。在该系统中,数据库图像被分割成颜色纹理均匀的区域。对于每个区域,我们定义了一个日常生活中使用的颜色名称。在检索过程中,选择包含与查询相同颜色名称区域的图像作为候选图像。这些候选图像将根据其颜色和纹理特征进一步排名。通过这种方式,系统减少了数字图像特征与用户脑海中丰富的语义之间的“语义差距”。实验结果表明,该系统使用的特征较少,检索效果良好。
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