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Transform-domain modeling of nonGaussian and 1/f processes.

机译:非高斯和1 / f过程的变换域建模。

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Classical Gaussian, Markov, and Poisson models have played a vital role in the remarkable success of statistical signal processing. However, a host of signals—images, network traffic, financial times series, seismic measurements, wind turbulence, and others—exhibit properties beyond the scope of classical models, properties that are crucial to analysis and processing of these signals. These properties include a heavy-tailed marginal probability distribution, a nonlinear dependency structure, and a slowly-decaying or nonstationary correlation function. Fourier, wavelet, and related transforms have demonstrated a remarkable ability to decorrelate and simplify signals with these properties. Although useful transform-domain algorithms have been developed for signal analysis and processing, realistic transform-domain statistical models have not.; In this thesis, we develop several new statistical models for signals in the transform-domain with an eye towards developing improved algorithms for tasks such as noise removal, synthesis, classification, segmentation, and compression. We primarily focus on the wavelet transform, with its efficient multiresolution tree structure, and the Fourier transform. However, the theory, which is rooted in topics such as probabilistic graphs, hidden Markov models, and fractals, can be applied in a much more general setting. Our models have led to new algorithms for signal estimation, segmentation, and synthesis as well as to new insights into the behavior of data network traffic, insights potentially useful for network design and control.
机译:古典高斯模型,马尔可夫模型和泊松模型在统计信号处理的显著成功中发挥了至关重要的作用。但是,许多信号(图像,网络流量,金融时间序列,地震测量值,风湍流等)显示的特性超出了经典模型的范围,这些特性对于分析和处理这些信号至关重要。这些属性包括重尾边缘概率分布,非线性相关性结构以及缓慢衰减或非平稳的相关函数。傅立叶变换,小波变换和相关变换已显示出显着的具有这些特性的去相关和简化信号的能力。尽管已经开发了有用的变换域算法来进行信号分析和处理,但实际的变换域统计模型却没有。在本文中,我们针对变换域中的信号开发了几种新的统计模型,着眼于开发改进的算法来完成诸如噪声去除,合成,分类,分割和压缩等任务。我们主要关注小波变换及其有效的多分辨率树结构和傅立叶变换。但是,该理论植根于诸如概率图,隐马尔可夫模型和分形等主题,可以在更为通用的环境中应用。我们的模型导致了用于信号估计,分段和合成的新算法,以及对数据网络流量行为的新见解,这些见解对网络设计和控制很有用。

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