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Optical image classification using optical/digital hybrid image processing systems.

机译:使用光学/数字混合图像处理系统进行光学图像分类。

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摘要

Offering parallel and real-time operations, optical image classification is becoming a general technique in the solution of real-life image classification problems. This thesis investigates several algorithms for optical realization.;Compared to other statistical pattern recognition algorithms, the Kittler-Young transform can provide more discriminative feature spaces for image classification. We shall apply the Kittler-Young transform to image classification and implement it on optical systems. A feature selection criterion is designed for the application of the Kittler-Young transform to image classification. The realizations of the Kittler-Young transform on both a joint transform correlator and a matrix multiplier are successively conducted. Experiments of applying this technique to two-category and three-category problems are demonstrated.;To combine the advantages of the statistical pattern recognition algorithms and the neural network models, processes using the two methods are studied. The Karhunen-Loeve Hopfield model is developed for image classification. This model has significant improvement in the system capacity and the capability of using image structures for more discriminative classification processes.;As another such hybrid process, we propose the feature extraction perceptron. The application of feature extraction techniques to the perceptron shortens its learning time. An improved activation function of neurons (dynamic activation function), its design and updating rule for fast learning process and high space-bandwidth product image classification are also proposed. We have shortened by two-thirds the learning time on the feature extraction perceptron as compared with the original perceptron. By using this architecture, we have shown that the classification performs better than both the Kittler-Young transform and the original perceptron.
机译:提供并行和实时操作,光学图像分类已成为解决现实图像分类问题的通用技术。本文研究了几种光学实现算法。与其他统计模式识别算法相比,Kittler-Young变换可以为图像分类提供更多的判别特征空间。我们将把Kittler-Young变换应用于图像分类并在光学系统上实现它。设计了特征选择标准,以将Kittler-Young变换应用于图像分类。依次进行了联合变换相关器和矩阵乘法器的Kittler-Young变换的实现。演示了将该技术应用于两类和三类问题的实验。为了结合统计模式识别算法和神经网络模型的优点,研究了使用这两种方法的过程。 Karhunen-Loeve Hopfield模型用于图像分类。该模型在系统容量和使用图像结构进行更具区分性的分类过程的能力方面有了显着改进。;作为另一个此类混合过程,我们提出了特征提取感知器。特征提取技术在感知器上的应用缩短了学习时间。还提出了一种改进的神经元激活函数(动态激活函数),快速学习过程的设计和更新规则以及高空带宽产品图像分类。与原始感知器相比,我们将特征提取感知器的学习时间缩短了三分之二。通过使用这种体系结构,我们证明了分类的效果要优于Kittler-Young变换和原始感知器。

著录项

  • 作者

    Li, Xiaoyang.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Physics Optics.
  • 学位 Ph.D.
  • 年度 1990
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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