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Content-based image retrieval system based on combined and weighted multi-features

机译:基于基于内容的图像检索系统基于组合和加权多功能

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This paper, we proposed a novel framework for combining and weighting all of three i.e. color, shape and texture features to achieve higher retrieval efficiency. The color feature is extracted by quantifying the YUV color space and the color attributes like the mean value, the standard deviation, and the image bitmap of YUV color space is represented. The texture features are obtained by the entropy based on the gray level cooccurrence matrix and the edge histogram descriptor of an image. The shape feature descriptor is derived from Fourier descriptors (FDs) and the FDs derived from different signatures. When computing the similarity between the query image and target image in the database, normalization information distance is also used for adjusting distance values into the same level. And then the linear combination has used to combine the normalized distance of the color, shape and texture features to obtain the similarity as the indexing of image. Furthermore, an experimental results indicated, a weight variation to achieve higher retrieval efficiency and the proposed technique indeed outperforms other schemes in terms of the accuracy and efficiency.
机译:本文提出了一种组合和加权三个的新颖框架,即彩色,形状和纹理特征,以实现更高的检索效率。通过量化YUV颜色空间和颜色属性,如平均值,标准偏差和YUV颜色空间的图像位图提取的颜色特征。基于灰度Cooccurrence矩阵和图像的边缘直方图描述符,通过熵获得纹理特征。形状特征描述符从傅立叶描述符(FDS)导出,并且来自不同签名的FDS。当在数据库中计算查询图像和目标图像之间的相似性时,归一化信息距离也用于将距离值调整为相同的级别。然后,线性组合已经用于将颜色,形状和纹理特征的归一化距离组合,以获得与图像索引的相似度。此外,表明实验结果,重量变化以实现更高的检索效率和所提出的技术在准确性和效率方面确实优于其他方案。

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