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Significant region based image retrieval using curvelet transform

机译:使用Curvelet变换的基于重要区域的图像检索

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摘要

Region-based image retrieval system has been an active research topic in areas such as, entertainment, education, multimedia, image classification and searching. The system decomposes an image into discrete regions and each region is described using primitive features such as color, texture, shape or the combination of them. The extracted regions are indexed and retrieved. One of the key issues with the region-based image retrieval system is to extract essential information from the raw data which reflect the image content. Although large numbers of feature extraction, indexing and retrieval techniques have been developed, there are still no universally accepted techniques available for region/object representation and retrieval. In this paper we analyzes a biological vision based system which doesn't need full semantic understanding of image content, extracts features from significant/salient regions and index them for retrieval. The proposed system uses saliency map to locate viewer's attention and Curvelet Transform in combination with color histogram to represent the significant regions. Experimental results show that the proposed system outperforms the conventional image retrieval systems.
机译:基于区域的图像检索系统已经成为娱乐,教育,多媒体,图像分类和搜索等领域的活跃研究主题。该系统将图像分解为离散的区域,并使用原始特征(例如颜色,纹理,形状或它们的组合)描述每个区域。对提取的区域进行索引并检索。基于区域的图像检索系统的关键问题之一是从原始数据中提取反映图像内容的基本信息。尽管已经开发了大量的特征提取,索引和检索技术,但是仍然没有普遍接受的技术可用于区域/对象表示和检索。在本文中,我们分析了一种基于生物视觉的系统,该系统不需要完全理解图像内容的语义,可以从重要/显着区域提取特征并将其编入索引以进行检索。所提出的系统使用显着性图来定位观看者的注意力,并将Curvelet变换与颜色直方图相结合来表示重要区域。实验结果表明,该系统优于传统的图像检索系统。

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