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Reduced polynomial classifier using within-class standardizing transform

机译:使用类内标准化变换的简化多项式分类器

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In this paper we introduce a novel, reduced dimension, Polynomial Regression based Classifier (PRC). The classical PRC expands the observed feature data set by considering higher order data statistics. The herein presented novel PRC preliminary performs projections of the data on suitable subspaces associated with the different classes. The projection operation is followed by discarding the contributions due to the higher order mixed sample moments evaluated on the data. Thereby, the overall polynomial approximation order is maintained while the dimensionality of the expanded feature space exploited by the reduced dimension classifier is drastically reduced. We assess the performance of both the full and the reduced PRC by numerical simulations on different scenarios. The reduced dimension PRC performs at least as well as the classical PRC with a significantly lower number of involved terms. This paves the way for extensively exploiting the PRC flexibility and applicability to complex classification problem although in resource limited system environments, such as, for instance, real-time applications on FPGAs.
机译:在本文中,我们介绍了一种新颖的,降维的,基于多项式回归的分类器(PRC)。经典PRC通过考虑高阶数据统计来扩展观察到的特征数据集。本文提出的新颖的PRC初步在与不同类别相关联的合适子空间上执行数据的投影。在投影操作之后,将丢弃由于对数据进行评估的高阶混合样本矩而造成的影响。从而,保持了整体多项式近似阶数,同时极大地减小了由降维分类器利用的扩展特征空间的维数。我们通过在不同情况下进行数值模拟来评估完全和减少的PRC的性能。降维PRC的性能至少与经典PRC相当,涉及的术语数量要少得多。尽管在资源有限的系统环境中,例如在FPGA上的实时应用程序,这为广泛利用PRC的灵活性和复杂性分类问题铺平了道路。

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