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Nonparametric error estimation techniques a

机译:非参数误差估计技术

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Abstract: The development of ATR performance characterization tools is very important for the design, evaluation and optimization of ATR systems. One possible approach for characterizing ATR performance is to develop measures of the degree of separability of the different target classes based on the available multi-dimensional image measurements. One such measure is the Bayes error which is the minimum probability of misclassification. Bayes error estimates have previously been obtained using Parzen window techniques on real aperture, high range resolution, radar data sets and on simulated synthetic aperture radar (SAR) images. This report extends these results to real MSTAR SAR data. Our results how that the Parzen window technique is a good method for estimating the Bayes error for such large dimensional data sets. However, in order to apply non-parametric error estimation techniques, feature reduction is needed. A discussion of the relationship between feature reduction and non-parametric estimation is included in this paper. The results of multimodal Parzen estimation on MSTAR images are also described. The tools used to produce the Bayes error estimates have been modified to produce Neyman-Pearson criterion estimates as well. Receiver Operating Characteristic curves are presented to illustrate non- parametric Neyman-Pearson error estimation on MSTAR images.!2
机译:摘要:开发ATR性能表征工具对于ATR系统的设计,评估和优化非常重要。表征ATR性能的一种可能方法是,根据可用的多维图像测量结果,开发出不同目标类别的可分离性程度的度量。贝叶斯误差就是一种这样的度量,它是分类错误的最小可能性。先前已经使用Parzen窗口技术在真实孔径,高范围分辨率,雷达数据集和模拟合成孔径雷达(SAR)图像上获得了贝叶斯误差估计。该报告将这些结果扩展到实际的MSTAR SAR数据。我们的结果表明,Parzen窗口技术是估算此类大尺寸数据集贝叶斯误差的一种好方法。但是,为了应用非参数误差估计技术,需要减少特征。本文讨论了特征约简和非参数估计之间的关系。还描述了对MSTAR图像进行多模态Parzen估计的结果。用于生成贝叶斯误差估计的工具已经过修改,也可以产生Neyman-Pearson标准估计。给出了接收机工作特性曲线,以说明MSTAR图像上的非参数Neyman-Pearson误差估计。2

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