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Wavelet and ridgelet transforms for pattern recognition and denoising.

机译:小波和脊波变换用于模式识别和去噪。

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摘要

The application of wavelet and ridgelet transforms in pattern recognition is still in its infancy; while their use in denoising has been a very hot topic in recent years. The aim of this thesis is to study these two important problems. In the area of pattern recognition, we develop a handwritten numeral recognition descriptor using multi-wavelets and neural networks. We perform multiwavelet orthonormal shell expansion on the contour to get several resolution levels and the average. Then we use the shell coefficients as features to input into a feed-forward neural network to recognize the handwritten numerals. We also present two novel descriptors for feature extraction by using ridgelets. Fourier spectrum and wavelet cycle-spinning are used to achieve rotational invariance. The descriptors are very robust to noise even when the noise level is high. Experimental results show that the new descriptors are excellent choices for pattern recognition.; In the area of denoising, we first study multiwavelet thresholding by incorporating neighbouring coefficients. Experimental results show that this approach outperforms neighbour single wavelet denoising for some standard test signals and real life images. Then, we propose a wavelet image thresholding scheme by incorporating neighbouring coefficients. Experimental results show that translation invariant (TI) denoising with neighbour dependency is better than VisuShrink and the TI denoising method developed by Yu et al. Finally, we propose to use Simulated Annealing to find both the customized wavelet filters and the customized threshold for the given noisy image at the same time. The results we obtained are promising compared to other results published in the literature.
机译:小波和脊波变换在模式识别中的应用仍处于起步阶段。近年来,它们在去噪中的应用一直是一个非常热门的话题。本文的目的是研究这两个重要问题。在模式识别领域,我们使用多小波和神经网络开发了手写数字识别描述符。我们在轮廓上执行多小波正交壳展开,以获得几个分辨率级别和平均值。然后,我们使用壳系数作为特征,输入到前馈神经网络以识别手写数字。我们还提出了两个新颖的描述符,用于通过使用ridgelet进行特征提取。傅立叶频谱和小波循环旋转用于实现旋转不变性。即使噪声水平很高,描述符也对噪声非常鲁棒。实验结果表明,新的描述符是模式识别的绝佳选择。在去噪领域,我们首先通过合并相邻系数来研究多小波阈值化。实验结果表明,对于某些标准测试信号和真实图像,该方法优于邻居单小波去噪。然后,我们提出了一种小波图像阈值方案,通过合并相邻系数。实验结果表明,具有邻域依赖性的平移不变(TI)去噪效果优于VisuShrink和Yu等人开发的TI去噪方法。最后,我们建议使用模拟退火同时为给定的噪声图像找到定制的小波滤波器和定制的阈值。与文献中发表的其他结果相比,我们获得的结果很有希望。

著录项

  • 作者

    Chen, Guangyi.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2004
  • 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

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