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Signal Analysis in the Ambiguity Domain.

机译:模糊域中的信号分析。

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摘要

Time-Frequency Distributions (TFDs) are accounted to be one of the powerful tools for analysis of time-varying signals. Although a variety of TFDs have been proposed, most of their designs were targeted towards obtaining good visualization and limited work is available for characterization applications.;Once having assessed the suitability of this domain for NS signal analysis, a new formulation for obtaining AD transformation is introduced. The number theory concepts, specifically the even-ordered Ramanujan Sums (RS) are used to obtain the proposed transform function. A detailed investigation and comparison to the classical approach, on this novel class of functions reveals the many benefits of the RS-modified AD functions: inherent sparsity in representation, dimensionality reduction, and robustness to noise.;The next contribution in this work, is the proposal of kernel modifications in AD for obtaining high resolution (and good time localization) distribution. This is motivated by the existing trade-off between TF resolution and interfering term reduction in TF distributions. Here, certain variants of TF kernels are proposed in the AD. In addition, kernels that are derived from the concept of learning machines are introduced for discriminative characterization of NS signals.;Following this, two novel AD-based schemes for neurological disorder discrimination using gait and pathological speech detection are introduced. The performance evaluation of these AD-based schemes, using a linear classifier, resulted in a maximum overall classification accuracy of 93.1% and 97.5% for gait and pathological speech applications respectively. The accuracies were obtained after a rigorous leave-one-out technique validation strategy. These results further confirm the potential of the proposed schemes for efficient information extraction for real-life signals.;In this work, the characteristics of the ambiguity domain (AD) is suitably exploited to obtain a novel automated analysis scheme that preserves the inherent TF connection during Non-Stationary (NS) signal processing. Following this, an energy-based discriminative set of feature vectors for facilitating efficient characterization of the given time-varying input has been proposed. This scheme is motivated by the fact that, although, the interfering (or cross-) terms plague the representation, they carry important signal interaction information, which could be investigated for usability for time-varying signal analysis.
机译:时频分布(TFD)被认为是分析时变信号的强大工具之一。尽管已提出了多种TFD,但它们的大多数设计都旨在获得良好的可视化效果,并且有限的工作可用于表征应用。;一旦评估了该域对NS信号分析的适用性,便获得了一种用于获得AD转化的新配方。介绍。数论概念,特别是偶数拉曼努扬和(RS)用于获得所提出的变换函数。对这种新颖的功能类别的详细研究和与经典方法的比较揭示了经RS修改的AD功能的许多好处:表示固有的稀疏性,降维和对噪声的鲁棒性。为获得高分辨率(和良好的时间本地化)分布而在AD中进行内核修改的建议。这是由于TF分辨率与TF分布的干扰项减少之间的现有权衡而产生的。在此,在AD中提出了TF内核的某些变体。此外,还引入了源自学习机概念的内核,用于对NS信号进行判别性表征。接着,介绍了两种基于AD的新颖步态和病理性语音检测方法,用于神经系统疾病的识别。使用线性分类器对这些基于AD的方案进行性能评估,可以使步态和病理性语音应用的最大总体分类准确度分别达到93.1%和97.5%。这些准确性是通过严格的留一法技术验证策略获得的。这些结果进一步证实了所提出的方案对于现实信号的有效信息提取的潜力。在这项工作中,模糊域(AD)的特征被适当地利用以获得保留固有TF连接的新颖的自动分析方案。在非平稳(NS)信号处理期间。在此之后,已经提出了一种基于能量的可区分特征向量集,用于促进给定时变输入的有效表征。该方案的动机是,尽管干扰(或交叉)项困扰着表示,但它们携带了重要的信号交互信息,可以对其进行调查以用于时变信号分析。

著录项

  • 作者

    Sugavaneswaran, Lakshmi.;

  • 作者单位

    Ryerson University (Canada).;

  • 授予单位 Ryerson University (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 199 p.
  • 总页数 199
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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