基于内容的图像检索系统中有效的模糊颜色和纹理特征提取技术

K. Jayanthi, M. Karthikeyan
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引用次数: 5

摘要

未来用户在多媒体检索领域的需求是许多研究和发展活动家关注的焦点。经验观察到,没有一种算法可以有效地提取所有不同类型的图像,如建筑图像、花卉图像、汽车图像等。因此,对某些颜色、纹理和形状提取技术进行了深入的分析,以确定适合特定类型图像的有效CBIR技术。图像的提取包括特征描述、索引生成和特征检测。本文提出的底层特征提取技术在包含1000幅图像的Corel数据库上进行了测试。将查询图像的特征向量(QI)与数据库图像的特征向量进行比较,得到匹配图像(MI)。本文提出了模糊颜色和纹理直方图(FCTH)技术,该技术基于数据库中图像的颜色和边缘的相似性提取匹配图像。计算了所提技术的图像检索精度值(IRP),并与现有技术进行了比较。本文使用的算法有离散余弦变换(DCT)、离散小波变换(DWT)和模糊链接算法。该方法提高了平均精度值。FCTH对于图像索引和图像检索也是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient fuzzy color and texture feature extraction technique for content based image retrieval system
The future user needs in the field of Multimedia retrieval is the focus of many research and development activists. It is empirically observed that no single algorithm is efficient in extracting all different types of images like building images, flower images, car images and so on. Hence a thorough analysis of certain color, texture and shape extraction techniques are carried out to identify an efficient CBIR technique which suits for a particular type of images. The Extraction of an image includes feature description, index generation and feature detection. The low-level feature extraction techniques are proposed in this paper are tested on Corel database, which contains 1000 images. The feature vectors of the query image (QI) are compared with feature vectors of the database images to obtain matching images(MI). This paper proposes Fuzzy Color and Texture Histogram (FCTH) techniques which extract the matching image based on the similarity of color and edge of an image in the database. The Image Retrieval Precision value (IRP) of the proposed techniques are calculated and compared with that of the existing techniques. The algorithms used in this paper are Discrete Cosine Transform (DCT), Discrete Wavelet Transform (DWT) and Fuzzy Linking algorithm. The proposed technique results in the improvement of the average precision value. Also FCTH is effective and efficient for image indexing and image retrieval.
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