DCT-SVD domain feature vector for image retrieval

R. Patil
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引用次数: 2

Abstract

The novel approach combines Cosine Transform (DCT) and Singular Value Decomposition (SVD) for content based image retrieval (CBIR). DCT coefficients are mapped into four, eight, sixteen, thirty two and sixty four quadrants and then SVD is applied on each quadrant. The singular values from each quadrant are used as a feature vector for each image. Further image is divided into blocks and DCT applied on each block. Each block DCT coefficients are mapped into different quadrants and then SVD apply on each block. These SVD coefficients are used as a feature vector for each image in the database. Proposed algorithm tested over database of 1200 images having 15 different categories. Results are compared using grayscale image, RGB color plane and YCbCr color plane. Two similarity measures are used Bray Curtis Distance (BCD) and Euclidean Distance(ED). Performance evaluation of proposed method calculated by using overall average precision and overall average recall.
用于图像检索的DCT-SVD域特征向量
该方法将余弦变换(DCT)和奇异值分解(SVD)相结合,用于基于内容的图像检索(CBIR)。将DCT系数映射到4、8、16、32和64个象限,然后在每个象限上应用奇异值分解。每个象限的奇异值作为每个图像的特征向量。将图像进一步划分为块,并在每个块上应用DCT。将每个块的DCT系数映射到不同的象限,然后在每个块上应用奇异值分解。这些SVD系数被用作数据库中每个图像的特征向量。该算法在包含15个不同类别的1200幅图像的数据库上进行了测试。采用灰度图像、RGB彩色平面和YCbCr彩色平面进行对比。采用Bray Curtis Distance(BCD)和Euclidean Distance(ED)两种相似性度量。采用总体平均精度和总体平均召回率计算方法的性能评价。
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