基于内容的提升方案彩色图像检索

Huihui Huang, Wei Huang, Zhigang Liu, Wei-rong Chen, Q. Qian
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引用次数: 14

摘要

基于内容的图像检索(CBIR)的目的是利用图像本身的视觉内容来查询目标。尽管经典小波变换能有效地表示图像特征,适用于CBIR,但在实现过程中仍存在浮点运算和分解速度等问题,而提升方案是构造双正交小波滤波器的一种新颖的空间方法。提升方案具有构造方便、结构简单、整数到整数变换、计算复杂度低、适应性强等特点,在CBIR中具有广阔的应用前景。本文采用广义提升及其自适应提升方法,将HSI彩色图像分解成多层次尺度和小波系数,利用小波系数进行f范数理论的图像特征提取和相似度匹配。同时,我们提出了一种渐进的图像滤波策略来实现灵活的CBIR。最后,将提升方案与经典方案在检索精度和检索速度方面进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content-based color image retrieval via lifting scheme
Content-based image retrieval (CBIR) aims at querying targets by using visual contents of image itself. Although classical wavelet transform is effective in representing image feature and thus is suitable in CBIR, it still encounters problems especially in implementation, e.g. floating-point operation and decomposition speed, which may nicely be solved by lifting scheme, a novel spatial approach for constructing biorthogonal wavelet filters. Lifting scheme has such intriguing properties as convenient construction, simple structure, integer-to-integer transform, low computational complexity as well as flexible adaptivity, revealing its potentials in CBIR. In this paper, by using general lifting and its adaptive version, we decompose HSI color images into multilevel scale and wavelet coefficients, with which, we can perform image feature extraction and similarity match by means of F-norm theory. Meanwhile, we provide a progressive image filtering strategy to achieve flexible CBIR. Eventually, the retrieval performances of lifting scheme are compared with those of its classical counterpart in retrieval accuracy and speed.
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