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A generalization of the minimum classification error (MCE) training method for speech recognition and detection.

机译:语音识别和检测的最小分类错误(MCE)训练方法的概括。

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摘要

The model training algorithm is a critical component in the statistical pattern recognition approaches which are based on the Bayes decision theory. Conventional applications of the Bayes decision theory usually assume uniform error cost and result in a ubiquitous use of the maximum a posteriori (MAP) decision policy and the paradigm of distribution estimation as practice in the design of a statistical pattern recognition system. The minimum classification error (MCE) training method is proposed to overcome some substantial limitations for the conventional distribution estimation methods. In this thesis, three aspects of the MCE method are generalized. First, an optimal classifier/recognizer design framework is constructed, aiming at minimizing non-uniform error cost. A generalized training criterion named weighted MCE is proposed for pattern and speech recognition tasks with non-uniform error cost. Second, the MCE method for speech recognition tasks requires appropriate management of multiple recognition hypotheses for each data segment. A modified version of the MCE method with a new approach to selecting and organizing recognition hypotheses is proposed for continuous phoneme recognition. Third, the minimum verification error (MVE) method for detection-based automatic speech recognition (ASR) is studied. The MVE method can be viewed as a special version of the MCE method which aims at minimizing detection/verification errors. We present many experiments on pattern recognition and speech recognition tasks to justify the effectiveness of our generalizations.
机译:模型训练算法是基于贝叶斯决策理论的统计模式识别方法中的关键组成部分。贝叶斯决策理论的传统应用通常假设一致的错误成本,并导致在统计模式识别系统设计中普遍采用最大后验(MAP)决策策略和分布估计范式。提出了最小分类误差(MCE)训练方法,以克服常规分布估计方法的一些实质性限制。本文对MCE方法的三个方面进行了概括。首先,构建了一个最佳的分类器/识别器设计框架,旨在最大程度地减少非均匀错误成本。提出了一种通用的训练准则,称为加权MCE,用于具有不均匀错误代价的模式和语音识别任务。其次,用于语音识别任务的MCE方法要求对每个数据段适当管理多个识别假设。提出了一种MCE方法的改进版本,该方法具有用于选择和组织识别假设的新方法,用于连续音素识别。第三,研究了基于检测的自动语音识别(ASR)的最小验证误差(MVE)方法。 MVE方法可以看作是MCE方法的特殊版本,旨在最小化检测/验证错误。我们提出了许多关于模式识别和语音识别任务的实验,以证明我们推广的有效性。

著录项

  • 作者

    Fu, Qiang.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 136 p.
  • 总页数 136
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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