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A novel reduced-complexity approach to hidden Markov modeling of two-dimensional processes with application to face recognition.

机译:一种新颖的降低复杂度的二维过程隐马尔可夫建模方法,应用于人脸识别。

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摘要

The 2-D Hidden Markov Model (HMM) is an extension of the traditional 1-D HMM that has shown distinctive efficiency in modeling 1-D signals. Unlike 1-D HMMs, 2-D HMMs are known for their prohibitively high complexity. This encouraged many researchers to work on alternatives such as Pseudo 2-D HMM and Embedded HMM for 2-D recognition applications to avoid the complexity problem. Those applications include, but are not limited to, Face Recognition, Optical Character Recognition, Face Detection, Image Retrieval, and Object Recognition. The Hidden Layer's complexity of a typical second-order 2-D HMM is normally in the order of (N3). The term "Hidden Layer" refers to the computations of the probabilities of state transition and N is the number of states in the model.; In this thesis, a low complexity high performance 2-D Hidden Markov Model (HMM) is proposed and is applied to the problem of Face Recognition. The proposed model is a true 2-D HMM. The complexity of the Hidden Layer is brought down to the order of (2N2) using a basic assumption of conditional independence between vertical and horizontal state transitions. This assumption allows replacing the 3-D state transition matrix with two 2-D transition matrices.; HMM complexity is always addressed in the literature from the Hidden Layer perspective, yet the complexity of the observation layer is not trivial. The mixtures of the proposed model are tied for lower observation layer complexity. The performance and the complexity of the proposed model with tied mixtures are investigated while applied to the problem of face recognition. The proposed face recognition system achieves recognition rates up to 100% on the AT&T facial database with complexity that is comparable to that of 1-D HMM.
机译:2-D隐马尔可夫模型(HMM)是对传统1-D HMM的扩展,该模型在对1-D信号建模方面表现出独特的效率。与1-D HMM不同,2-D HMM以其过高的复杂性而闻名。这鼓励了许多研究人员致力于替代方案,例如用于2D识别应用程序的伪2维HMM和嵌入式HMM,以避免复杂性问题。这些应用包括但不限于面部识别,光学字符识别,面部检测,图像检索和对象识别。典型的二阶二维HMM的隐藏层的复杂度通常为(N3)。术语“隐藏层”是指状态转移概率的计算,N是模型中的状态数。本文提出了一种低复杂度的高性能二维隐马尔可夫模型(HMM),并将其应用于人脸识别问题。所提出的模型是真正的二维HMM。使用垂直和水平状态转换之间的条件独立性的基本假设,可以将隐藏层的复杂度降低到(2N2)的数量级。该假设允许用两个2-D转移矩阵代替3-D状态转移矩阵。 HMM的复杂性总是在文献中从“隐藏层”的角度来解决,但是观察层的复杂性并不是微不足道的。所提出的模型的混合物被捆绑在一起以降低观察层的复杂性。研究了该模型在混合约束条件下的性能和复杂性,并将其应用于人脸识别问题。拟议的面部识别系统在AT&T面部数据库上的识别率高达100%,其复杂度可与一维HMM媲美。

著录项

  • 作者

    Othman, Hisham H. A.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Engineering Electronics and Electrical.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;人工智能理论;
  • 关键词

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