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An image retrieval scheme based on block level hybrid dct-svd fused features

机译:基于块电平混合DCT-SVD融合功能的图像检索方案

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摘要

In this paper, an image retrieval scheme has been proposed based on block level hybrid features. The block level salient feature are extracted in two parts: first level features are formed after the application of DCT and second level features are obtained after the processing of SVD. In the first level feature, salient components are computed from image blocks based on DCT transformation, which results into DC and AC coefficients. Here, the DC component is considered as the first level feature and the AC components are processed further to get the second level feature. Now, to extract second level feature, SVD is applied over the AC components which results into singular, left singular and right singular matrices. Based on the values of left and right singular matrices, some statistical parameters are computed which serve as the second level feature for the proposed scheme. To highlight the importance of extracted feature a weight factor is assigned to both first and second level features. However, more weight is given to the significant feature i.e the first level feature than the second level feature. Also, the feature extraction process is carried out separately for all the three planes of a color image, which in return gives more detailed feature for the proposed scheme. For the retrieval mechanism, similarity is measured by utilizing five existing distance measure schemes and the results are thoroughly analyzed to check the retrieval efficiency of the proposed scheme. Due to the variable weight factor, experimental results shows decent retrieval performance and the work is comparable to the existing works in image retrieval domain.
机译:本文基于块级混合特征提出了一种图像检索方案。块电平突出特征在两部分中提取:在应用DCT的应用之后形成第一级别特征,并在SVD处理后获得。在第一级别特征中,基于DCT转换从图像块计算突出分量,从而导致DC和AC系数。这里,DC分量被认为是第一级别特征,并且进一步处理AC组件以获得第二级别特征。现在,要提取第二级功能,SVD应用于AC组件,该组件导致奇异,左字和右奇异矩阵。基于左右奇异矩阵的值,计算一些统计参数,其用作所提出的方案的第二级特征。为了突出提取的特征的重要性,重量因子被分配给第一和第二级别。然而,对第一级别特征的重要特征比第二级别特征更多。此外,特征提取处理是针对彩色图像的所有三个平面分开进行的,这对于所提出的方案提供了更详细的特征。对于检索机制,通过利用五个现有距离测量方案来测量相似性,并彻底分析结果以检查所提出的方案的检索效率。由于可变权重因因子,实验结果表明了体面的检索性能,工作与图像检索域中的现有工作相当。

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