基于复合纹理特征表示的图像检索方法

Z. Xiaobo, Peng Jinye, Liu Tian, Li Chenyu
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引用次数: 0

摘要

针对灰度共生矩阵多尺度纹理特征描述能力的不足,基于非次采样shearlet变换的多方向多尺度特征,提出了一种新的纹理特征描述方法。复合纹理特征包括两个方面:一方面,利用图像灰度共现矩阵的四项统计量作为局部纹理特征;另一方面,对图像进行非下采样shearlet变换,得到不同的尺度和方向。基于子带系数图像的能量均值和方差,形成具有多尺度特征的图像纹理特征。将这两个特征赋予不同的权重,形成复合纹理特征,并利用欧几里得距离作为相似度度量,实现图像检索。这种复合纹理特征既能表示图像的局部纹理特征,又能表达图像的多尺度纹理特征。实验结果表明,基于复合纹理特征描述方法的图像检索精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Retrieval Method Based On Composite Texture Feature Representation
Aiming at the insufficiency of multi-scale texture feature description ability of gray level co-occurrence matrix, based on the multi-direction and multi-scale feature of non-sub sampled shearlet transform, a new method of texture feature description is proposed. The composite texture feature consists of two aspects: on the one hand, the four statistic of the gray level co-occurrence matrix of the image is used as a local texture feature; on the other hand, the non-sub sampled shearlet transform is performed on the image to obtain different scales and directions. Based on the mean and variance of the energy of the sub-band coefficient image, the texture features of the image with multi-scale characteristics are formed. The two features are given different weights to form a composite texture feature, and the Euclidean distance is used as the similarity measure to realize image retrieval. This composite texture feature can not only represent the local texture feature of the image, but also express the multi-scale texture feature of the image. Experimental results show that the precision of image retrieval based on composite texture feature description method is fine.
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