增强支持向量机与几种SAR目标识别方法的比较

S. Eldawlatly, Hossam Osman, Hussein I. Shahein
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引用次数: 6

摘要

对不同自动目标识别方法在合成孔径雷达(SAR)目标识别中的应用进行了比较研究。研究并比较了四种不同类型的方法。第一种是基于分布的,其中假设SAR图像数据具有统计数据模型。第二类包含一种基于主成分分析(PCA)的方法。第三类使用不同的神经网络架构。最后一类使用支持向量机(SVM)。它包含经典的支持向量机实现和作者在其他地方提出的增强实现,其中传统的欧几里得核被一个更适合所讨论的应用的新核取代。给出了实验结果。结果表明,增强的支持向量机方法在分类性能和混淆抑制方面都优于所有其他研究过的方法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced SVM versus Several Approaches in SAR Target Recognition
This paper presents a comparative study between different automatic target recognition (ATR) approaches in the application of synthetic aperture radar (SAR) target recognition. Four different categories of approaches are investigated and compared. The first is distribution-based where a statistical data model is assumed for the SAR image data. The second category contains one approach that is based upon principal component analysis (PCA). The third category employs different neural network architectures. The last category utilizes support vector machines (SVM). It contains the classical SVM implementation and an enhanced implementation proposed elsewhere by the authors in which the traditional Euclidean kernel is replaced by a new one that is more suitable for the application in question. Experimental results are presented. It is shown that the enhanced SVM approach outperforms all other investigated approaches in both the classification performance and the confuser rejection
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