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Block-level discrete cosine transform coefficients for autonomic face recognition.

机译:用于自主人脸识别的块级离散余弦变换系数。

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摘要

This dissertation presents a novel method of autonomic face recognition based on the recently proposed biologically plausible network of networks (NoN) model of information processing. The NoN model is based on locally parallel and globally coordinated transformations. In the NoN architecture, the neurons or computational units form distributed networks, which themselves link to form larger networks. In the general case, an n-level hierarchy of nested distributed networks is constructed. This models the structures in the cerebral cortex described by Mountcastle and the architecture based on that proposed for information processing by Sutton. In the implementation proposed in the dissertation, the image is processed by a nested family of locally operating networks along with a hierarchically superior network that classifies the information from each of the local networks. The implementation of this approach helps obtain sensitivity to the contrast sensitivity function (CSF) in the middle of the spectrum, as is true for the human vision system. The input images are divided into N x N blocks to define the local regions of processing. The N x N two-dimensional Discrete Cosine Transform (DCT), a spatial frequency transform, is used to transform the data into the frequency domain. Thereafter, statistical operators that calculate various functions of spatial frequency in the block are used to produce a block-level DCT coefficient. The image is now transformed into a variable length vector that is trained with respect to the data set. The classification was done by the use of a backpropagation neural network. The proposed method yields excellent results on a benchmark database. The results of the experiments yielded a maximum of 98.5% recognition accuracy and an average of 97.4% recognition accuracy. An advanced version of the method where the local processing is done on offset blocks has also been developed. This has validated the NoN approach and further research using local processing as well as more advanced global operators is likely to yield even better results.
机译:本文提出了一种基于最近提出的信息处理的生物网络模型(NoN)的自动人脸识别的新方法。 NoN模型基于局部并行和全局协调的转换。在NoN架构中,神经元或计算单元形成分布式网络,分布式网络自身链接以形成更大的网络。在一般情况下,将构建嵌套分布式网络的n级层次结构。该模型对Mountcastle描述的大脑皮层结构以及基于Sutton提出的用于信息处理的结构进行建模。在本文提出的实施方式中,图像是由嵌套的本地操作系统网络家族以及对来自每个本地网络的信息进行分类的分级上级网络一起处理的。这种方法的实现有助于获得对光谱中间的对比敏感度函数(CSF)的敏感度,就像人类视觉系统一样。输入图像分为N x N个块,以定义处理的局部区域。 N x N二维离散余弦变换(DCT)是一种空间频率变换,用于将数据变换到频域中。此后,计算块中空间频率的各种函数的统计运算符用于产生块级DCT系数。现在将图像转换为可变长度向量,该向量针对数据集进行了训练。通过使用反向传播神经网络进行分类。所提出的方法在基准数据库上产生了出色的结果。实验结果得出最大的识别精度为98.5%,平均的识别精度为97.4%。还开发了该方法的高级版本,其中对偏移量块进行本地处理。这已经验证了NoN方法,并且使用本地处理以及更先进的全球运营商进行的进一步研究可能会产生更好的结果。

著录项

  • 作者

    Scott, Willie L., II.;

  • 作者单位

    Louisiana State University and Agricultural & Mechanical College.;

  • 授予单位 Louisiana State University and Agricultural & Mechanical College.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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