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Interest Points Detection in Image Based on Topology Features of Multi-level Complex Networks

机译:基于多级复合网络拓扑特征的图像中的兴趣点检测

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摘要

In this paper, we presents a new method for extracting interest points from RGB images by complex network analysis theory. Firstly, the RGB images are expressed as the multi-level complex network model. The nodes in the complex network model are the maximum degree pixel of subgraphs and the links are the similarity and distance between the maximum degree pixels. Then three different algorithms were proposed to locate these interest points based on three topology features of high-level complex network model, which are degree, closeness and betweenness centrality. In order to verify the effectiveness of our algorithm, we use our algorithm for four different test images. It is remarkable that the identify targets by degree centrality algorithm are similar to Harris and SIFT algorithm, and the accuracy are more than them. The results show that our algorithm could identify interest points from the images effectively.
机译:在本文中,我们通过复杂的网络分析理论提出了一种从RGB图像中提取兴趣点的新方法。 首先,RGB图像被表示为多级复合网络模型。 复杂网络模型中的节点是子图的最大程度像素,并且链路是最大程度像素之间的相似性和距离。 然后提出了三种不同的算法以基于高级复杂网络模型的三个拓扑特征来定位这些兴趣点,这些特征是程度,亲近和中心性。 为了验证我们算法的有效性,我们使用我们的四种不同测试图像的算法。 值得注意的是,按程度中心算法识别目标类似于HARRIS和SIFT算法,并且精度大于它们。 结果表明,我们的算法可以有效地识别图像中的兴趣点。

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