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Texture Characterization via Automatic Threshold Selection on Image-Generated Complex Network

机译:通过在图像生成的复杂网络上自动阈值选择的纹理特征

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This work presents an automated approach to texture characterization through complex networks. By applying an automatic threshold selection for network degree map generation, we managed to achieve significant reduction in the number of descriptors used. The method is adaptive to any image database, because it is based on the analysis of the energy value of the degree histogram of the complex networks generated particularly from each database. Experiments using the proposed method for texture classification using databases from literature show that the proposed method can not only reduce feature vector size, but in some cases also improve correct classification rates when compared to other state of the art methods.
机译:这项工作介绍了通过复杂网络纹理表征的自动化方法。通过对网络程度映射的自动阈值选择应用,我们设法实现了使用的描述符数量的显着减少。该方法是自适应的任何图像数据库,因为它基于对特别是来自每个数据库产生的复杂网络的度直方图的能量值的分析。使用来自文献的数据库的纹理分类方法的实验表明,所提出的方法不仅可以减少特征向量尺寸,而且在某些情况下还提高了与现有技术的其他状态相比的正确分类速率。

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