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Characterisation of Signal Modality: Exploiting Signal Nonlinearity in Machine Learning and Signal Processing

机译:信号模态的表征:在机器学习和信号处理中利用信号非线性

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摘要

A novel method for online tracking of the changes in the nonlinearity within both real-domain and complex–valued signals is introduced. This is achieved by a collaborative adaptive signal processing approach based on a hybrid filter. By tracking the dynamics of the adaptive mixing parameter within the employed hybrid filtering architecture, we show that it is possible to quantify the degree of nonlinearity within both real- and complex-valued data. Implementations for tracking nonlinearity in general and then more specifically sparsity are illustrated on both benchmark and real world data. It is also shown that by combining the information obtained from hybrid filters of different natures it is possible to use this method to gain a more complete understanding of the nature of the nonlinearity within a signal. This also paves the way for building multidimensional feature spaces and their application in data/information fusion.
机译:介绍了一种在线跟踪实域和复数值信号中非线性变化的新颖方法。这是通过基于混合滤波器的协作自适应信号处理方法来实现的。通过跟踪所采用的混合滤波体系结构中的自适应混合参数的动力学,我们表明可以量化实值和复值数据中的非线性程度。在基准数据和实际数据中都说明了一般地跟踪非线性,然后更具体地跟踪稀疏性的实现。还表明,通过组合从不同性质的混合滤波器获得的信息,可以使用此方法获得对信号内非线性性质的更完整理解。这也为构建多维特征空间及其在数据/信息融合中的应用铺平了道路。

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