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首页> 外文期刊>Procedia Computer Science >Gray-statistics-based Twin Feature Extraction for Hyperbola Classification in Ground Penetrating Radar images
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Gray-statistics-based Twin Feature Extraction for Hyperbola Classification in Ground Penetrating Radar images

机译:基于灰色统计的双特征提取在探地雷达图像中的双曲线分类

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摘要

The row vector and column vector of a ground penetrating radar (GPR) B-scan image have different physical meanings, and the features of heterogeneous medium properties based on these vectors can provide new possibilities for hyperbola classification. This study uses the features of both row and column vectors (i.e., twin vectors), gray statistics, and united coding to produce a twin gray statistics sequence (TGSS), a representation of the GPR image, based on information entropy. An actual dataset and multiple classification methods are used to compare and evaluate the robustness and dimension reduction performance of TGSS. The results show that the proposed method has relatively favorable robustness and steady dimension reduction performance in the test environment with a small number of samples and class imbalance.
机译:探地雷达B扫描图像的行向量和列向量具有不同的物理含义,基于这些向量的异质介质特性可以为双曲线分类提供新的可能性。这项研究利用行向量和列向量(即孪生向量),灰度统计和联合编码的特征,基于信息熵来生成孪生灰度统计序列(TGSS),即GPR图像的表示形式。实际的数据集和多种分类方法用于比较和评估TGSS的鲁棒性和降维性能。结果表明,该方法在样本量少,类别不平衡的测试环境中具有较好的鲁棒性和稳定的降维性能。

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