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Kernel Uncorrelated Discriminant Analysis for Radar Target Recognition

机译:核目标识别的核不相关判别分析

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Kernel fisher discriminant analysis (KFDA) has received extensive study in recent years as a dimensionality reduction technique. KFDA always encounters an intrinsic singularity of scatter matrices in the feature space, namely 'small sample size' (SSS) problem. Several novel methods have been proposed to cope with this problem. In this paper, kernel uncorrelated discriminant analysis (KUDA) is proposed, which not only can bear on the SSS problem but also extract uncorrelated features, a desirable property for many applications. And then, we have conducted a comparative study on the application of KUDA and other variants of KFDA in radar target recognition problem. The experimental results indicate the effectiveness of KUDA and illustrate the utility of KFDA on the problem.
机译:近年来,内核费舍尔判别分析(KFDA)作为降维技术得到了广泛的研究。 KFDA始终在特征空间中遇到散射矩阵的固有奇异性,即“小样本量”(SSS)问题。已经提出了几种新颖的方法来解决这个问题。本文提出了核不相关判别分析(KUDA),它不仅可以解决SSS问题,而且可以提取不相关特征,这是许多应用程序所希望的特性。然后,我们对KUDA和KFDA的其他变体在雷达目标识别问题中的应用进行了比较研究。实验结果表明了KUDA的有效性,并说明了KFDA在此问题上的实用性。

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