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High resolution recognition using a tiered feature approach to search for patterns in signals: Study on the Portia smokescreen.

机译:使用分层特征方法的高分辨率识别以搜索信号中的模式:在Portia烟幕上进行研究。

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摘要

In this work we achieved several goals. First a new technique for organizing signal recognition using a Tier structure is proposed. The underlying philosophy of this structure has two purposes; one, to organize the signal features based on their complexity and two, to provide a means by which evolutionary techniques can evaluate optimal combinations of features for the given problem. The approach provides layers for organizing signal recognition, Tier I consisting of time-frequency features, Tier II, contour (or scalogram) features, and Tier III single point application features. The Tier structure is combined with a four-stage recognition process. The four stage process consists of feature extraction (stage 1), unsupervised learning (stage 2), detection (stage 3) and performance evaluation (stage 4). The signal recognition technique is applied to analyzing web vibrations made by a jumping spider, Portia fimbriata. For this application Tier I and II level, Continuous Wavelet Transforms (CWT) are used, whereby contour data is extracted. Application specific features are developed at the Tier III layer. All features are managed through a computer-aided tool, CLARA, developed specifically for this research. The multi-resolution Tier approach successfully detected, for the first time, subtle but significant differences in the Portia "smokescreen" signal. Results indicate significant improvement on detection for this application over previous approaches. Lastly a fifth stage is added to the signal recognition system, which couples optimization with the Tier architecture. A process is proposed which combines the recognition architecture with an evolutionary based algorithm intended for feature mining. For this work, the author points out the challenges associated with signal recognition, referring to the vast number of feature parameters that can be derived at the Tier I, II and III layers. Considerable time is spent on developing parameter settings for Tier I layer, where Short-Time Fourier Transforms (STFT) and CWT based approaches can be interchangeably used. Chromosome coding along with a fitness relation based on the receiver operator curve is discussed.
机译:在这项工作中,我们实现了几个目标。首先,提出了一种使用层结构组织信号识别的新技术。这种结构的基本原理有两个目的:一是根据信号特征的复杂性来组织信号特征,二是提供一种方法,使进化技术可以评估给定问题的特征的最佳组合。该方法提供了用于组织信号识别的层,包括时频特征的第I层,第II层,轮廓(或比例图)特征以及第III层单点应用特征。层结构与四阶段识别过程结合在一起。四个阶段包括特征提取(阶段1),无监督学习(阶段2),检测(阶段3)和性能评估(阶段4)。信号识别技术被应用于分析由跳跃蜘蛛Portia fimbriata造成的幅材振动。对于此应用程序级别I和II,使用了连续小波变换(CWT),从而提取轮廓数据。在Tier III层开发了特定于应用程序的功能。所有功能都通过专门为此研究开发的计算机辅助工具CLARA进行管理。多分辨率Tier方法首次成功检测到Portia“烟屏”信号中的细微但明显的差异。结果表明,与以前的方法相比,此应用程序的检测有了显着改善。最后,将第五阶段添加到信号识别系统,该系统将优化与Tier体系结构结合在一起。提出了一种将识别架构与旨在用于特征挖掘的基于进化算法的算法相结合的过程。对于这项工作,作者指出了可以在第I,II和III层获得的大量特征参数,从而指出了与信号识别相关的挑战。在开发第I层的参数设置上花费了相当多的时间,其中可以互换地使用短时傅立叶变换(STFT)和基于CWT的方法。讨论了染色体编码以及基于接收者操作符曲线的适应度关系。

著录项

  • 作者

    Dugan, Peter Jeffry.;

  • 作者单位

    State University of New York at Binghamton.;

  • 授予单位 State University of New York at Binghamton.;
  • 学科 Engineering System Science.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 197 p.
  • 总页数 197
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 系统科学;人工智能理论;
  • 关键词

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