首页> 外文学位 >Generalized feature extraction for structural pattern recognition in time-series data.
【24h】

Generalized feature extraction for structural pattern recognition in time-series data.

机译:用于时间序列数据中结构模式识别的通用特征提取。

获取原文
获取原文并翻译 | 示例

摘要

Pattern recognition encompasses two fundamental tasks: description and classification. Given an object to analyze, a pattern recognition system first generates a description of it (i.e., the pattern) and then classifies the object based on that description (i.e., the recognition). Two general approaches for implementing pattern recognition systems, statistical and structural, employ different techniques for description and classification. Statistical approaches to pattern recognition use decision-theoretic concepts to discriminate among objects belonging to different groups based upon their quantitative features. Structural approaches to pattern recognition use syntactic grammars to discriminate among objects belonging to different groups based upon the arrangement of their morphological (i.e., shape-based or structural) features. Hybrid approaches to pattern recognition combine aspects of both statistical and structural pattern recognition.; Structural pattern recognition systems are difficult to apply to new domains because implementation of both the description and classification tasks requires domain knowledge. Knowledge acquisition techniques necessary to obtain domain knowledge from experts are tedious and often fail to produce a complete and accurate knowledge base. Consequently, applications of structural pattern recognition have been primarily restricted to domains in which the set of useful morphological features has been established in the literature (e.g., speech recognition and character recognition) and the syntactic grammars can be composed by hand (e.g., electrocardiogram diagnosis). To overcome this limitation, a domain-independent approach to structural pattern recognition is needed that is capable of extracting morphological features and performing classification without relying on domain knowledge. A hybrid system that employs a statistical classification technique to perform discrimination based on structural features is a natural solution. While a statistical classifier is inherently domain independent, the domain knowledge necessary to support the description task can be eliminated with a set of generally-useful morphological features. Such a set of morphological features is suggested as the foundation for the development of a suite of structure detectors to perform generalized feature extraction for structural pattern recognition in time-series data.; The ability of the suite of structure detectors to generate features useful for structural pattern recognition is evaluated by comparing the classification accuracies achieved when using the structure detectors versus commonly-used statistical feature extractors. Two real-world databases with markedly different characteristics and established ground truth serve as sources of data for the evaluation. The classification accuracies achieved using the features extracted by the structure detectors were consistently as good as or better than the classification accuracies achieved when using the features generated by the statistical feature extractors, thus demonstrating that the suite of structure detectors effectively performs generalized feature extraction for structural pattern recognition in time-series data.
机译:模式识别包含两个基本任务:描述和分类。给定要分析的对象,模式识别系统首先生成对其的描述(即,模式),然后基于该描述对对象进行分类(即,识别)。实现模式识别系统的两种通用方法是统计方法和结构方法,它们采用不同的技术进行描述和分类。模式识别的统计方法使用决策理论概念根据其定量特征来区分属于不同组的对象。模式识别的结构化方法使用句法语法,根据其形态(即基于形状或结构)特征的排列来区分属于不同组的对象。模式识别的混合方法结合了统计和结构模式识别的各个方面。结构模式识别系统很难应用于新领域,因为执行描述和分类任务都需要领域知识。从专家那里获取领域知识所必需的知识获取技术是乏味的,并且常常无法产生完整而准确的知识库。因此,结构模式识别的应用主要局限于以下领域:在该领域中,在文献中已建立了有用的形态特征集(例如,语音识别和字符识别),并且可以手动编写语法语法(例如,心电图诊断) )。为了克服此限制,需要一种不依赖域的结构模式识别方法,该方法能够提取形态特征并执行分类而无需依赖域知识。采用统计分类技术以基于结构特征进行区分的混合系统是自然的解决方案。虽然统计分类器本质上是领域无关的,但是可以使用一组通常有用的形态特征来消除支持描述任务所需的领域知识。这种形态学特征集被建议作为开发一组结构检测器的基础,以执行广义特征提取以在时间序列数据中识别结构模式。通过比较使用结构检测器与常用统计特征提取器时获得的分类精度,可以评估结构检测器套件生成对结构模式识别有用的特征的能力。两个真实世界的数据库具有明显不同的特征和确定的基础事实,可作为评估的数据来源。使用结构检测器提取的特征获得的分类精度始终与使用统计特征提取器生成的特征时获得的分类精度一致或更好,从而证明结构检测器套件有效地对结构进行了广义特征提取时序数据中的模式识别。

著录项

  • 作者

    Olszewski, Robert Thomas.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 111 p.
  • 总页数 111
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号