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Motif Matrix Inference for Rotated Image Indexing and Retrieval

机译:旋转图像索引和检索的图案矩阵推断

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Motif is a promising descriptor to depict the content of image. In this study, two motif-relevant matrices, i.e. a motif average matrix (MAM) and a motif excessive matrix (MEM), are proposed firstly to describe the color and texture features of an image. Subsequently, in the light of the inference of MAM and MEM, a motif matrix (MM) is further proposed to resolve the issues of rotated image retrieval. In terms of such an inference MM, a 256 * 8 matrix, incorporates the colorful and textural characters and represents the consistent feature between the original and its rotated images. That is, MM reveals the potential relevance for rotated image retrieval. We carry out the experiments on the benchmark Corel image dataset, and the experimental results show that our approach of motif matrix inference improves the retrieval performance in comparison with the state-of-the-art image retrieval approaches.
机译:图案是一个有前途的描述符,可以描绘图像的内容。在该研究中,提出了两个基序相关矩阵,即主动率平均矩阵(MAM)和过多矩阵(MEM),描述图像的颜色和纹理特征。随后,在MAM和MEM的推动的光之光中,进一步提出了一种基序矩阵(MM)以解决旋转图像检索的问题。就这种推理MM而言,一个256 * 8矩阵,包括彩色和纹理字符,并且代表原件和其旋转图像之间的一致特征。也就是说,MM揭示了对旋转图像检索的潜在相关性。我们对基准Corel Image数据集进行了实验,实验结果表明,我们的图案矩阵推理方法与最先进的图像检索方法相比,提高了检索性能。

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