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A study of recent classification algorithms and a novel approach for biosignal data classification.

机译:最近的分类算法的研究和一种生物信号数据分类的新方法。

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摘要

Analyzing and understanding human biosignals have been important research areas that have many practical applications in everyday life. For example, Brain Computer Interface is a research area that studies the connection between the human brain and external systems by processing and learning the brain signals called Electroenceplograhpy (EEG) signals. Similarly, various assistive robotics applications are being developed to interpret eye or muscle signals in humans in order to provide control inputs for external devices. The efficiency for all of these applications depends heavily on being able to process and classify human biosignals. Therefore many techniques from Signal Processing and Machine Learning fields are applied in order to understand human biosignals better and increase the efficiency and success of these applications.;This thesis proposes a new classifier for biosignal data classification utilizing Particle Swarm Optimization Clustering and Radial Basis Function Networks (RBFN). The performance of the proposed classifier together with several variations in the technique is analyzed by utilizing comparisons with the state of the art classifiers such as Fuzzy Functions Support Vector Machines (FFSVM), Improved Fuzzy Functions Support Vector Machines (IFFSVM). These classifiers are implemented on the classification of same biological signals in order to evaluate the proposed technique. Several clustering algorithms, which are used in these classifiers, such as K-means, Fuzzy c-means, and Particle Swarm Optimization (PSO), are studied and compared with each other based on clustering abilities. The effects of the analyzed clustering algorithms in the performance of Radial Basis Functions Networks classifier are investigated. Strengths and weaknesses are analyzed on various standard and EEG datasets. Results show that the proposed classifier that combines PSO clustering with RBFN classifier can reach or exceed the performance of these state of the art classifiers. Finally, the proposed classification technique is applied to a real-time system application where a mobile robot is controlled based on person's EEG signal.
机译:分析和理解人类生物信号已经成为重要的研究领域,在日常生活中有许多实际应用。例如,“大脑计算机接口”是一个研究领域,它通过处理和学习称为“脑电图(EEG)”信号的大脑信号来研究人脑与外部系统之间的连接。类似地,正在开发各种辅助机器人技术应用来解释人类的眼睛或肌肉信号,以便为外部设备提供控制输入。所有这些应用程序的效率在很大程度上取决于能否处理和分类人类生物信号。因此,为了更好地了解人类生物信号并提高其应用效率和成功率,应用了信号处理和机器学习领域的许多技术。本文提出了一种基于粒子群优化聚类和径向基函数网络的生物信号数据分类器。 (RBFN)。通过与诸如模糊函数支持向量机(FFSVM),改进的模糊函数支持向量机(IFFSVM)等现有分类器的比较,分析了所提出分类器的性能以及该技术中的几种变化。这些分类器是在相同生物信号的分类上实现的,以便评估所提出的技术。研究了这些分类器中使用的几种聚类算法,例如K均值,模糊c均值和粒子群优化(PSO),并基于聚类能力进行了比较。研究了所分析的聚类算法对径向基函数网络分类器性能的影响。在各种标准和EEG数据集上分析优点和缺点。结果表明,将PSO聚类和RBFN分类器结合在一起的分类器可以达到或超过这些最新分类器的性能。最后,将提出的分类技术应用于实时系统应用中,其中基于人的EEG信号控制移动机器人。

著录项

  • 作者

    Cinar, Eyup.;

  • 作者单位

    Rochester Institute of Technology.;

  • 授予单位 Rochester Institute of Technology.;
  • 学科 Engineering Robotics.;Artificial Intelligence.
  • 学位 M.S.
  • 年度 2010
  • 页码 112 p.
  • 总页数 112
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 公共建筑;
  • 关键词

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