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Contourlet-1.3 and Generalized Gaussian model texture image retrieval

机译:Contourlet-1.3和广义高斯模型纹理图像检索

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In order to improve the retrieval rate of the original contourlet transform texture image retrieval system, a contourlet-1.3 transform based texture image retrieval method was proposed. In the system, the contourlet-1.3 transform is more localized than the original contourlet transform hence can avoid some certain aliasing and improve shift insensitivity. Generalized Gaussian Density (GGD) model parameters were cascaded to form feature vectors and Kullback-Leibler distance (KLD) function was used for similarity measure. Experimental results on 640 texture images from Vistex texture image database indicate that contourlet-1.3 transform based image retrieval system is superior to that of the original contourlet transform under the same system structure with almost same length of feature vectors, retrieval time and memory needed. Furthermore, GGD combined with KLD method has higher retrieval rates than energy based features combined with Euclidean distance under comparable levels of computational complexity, decomposition parameters including the number of scale and directional subband on each scale selected in both contourlet transforms can make retrieval results quite different.
机译:为了提高原始Contourlet变换纹理图像检索系统的检索率,提出了基于Contourlet-1.3变换的纹理图像检索方法。在系统中,Contourlet-1.3变换比原始Contourlet变换更加局部,因此可以避免某种别名并提高换档不敏感性。广义高斯密度(GGD)模型参数级联以形成特征向量,并且kullback-Leibler距离(KLD)功能用于相似度量。 Vistex纹理图像数据库640纹理图像上的实验结果表明,Contourlet-1.3基于变换的图像检索系统优于与具有几乎相同的特征向量,所需的检索时间和内存相同的系统结构下的原始Contourlet变换。此外,GGD与KLD方法结合的检索率比能量基于能量的特征与欧几里德距离相结合的计算复杂性,分解参数包括在两个Contourlet变换中选择的每个刻度上的刻度和定向子带的数量可以使检索结果非常不同。

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