首页> 外文会议>Image Processing, 2001. Proceedings. 2001 International Conference on >Wavelet methods for characterising mono- and poly-fractal noise structures in shortish time series: an application to functional MRI
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Wavelet methods for characterising mono- and poly-fractal noise structures in shortish time series: an application to functional MRI

机译:小波方法表征时间序列中的单形和多形噪声结构:在功能性MRI中的应用

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Functional magnetic resonance imaging (fMRI) time series generally demonstrate serial dependence. This endogenous auto-correlation typically exhibits long-range dependence described by a 1/f-like power law. We present a novel wavelet-based methodology for characterising the noise structure in short-medium length (shortish) fMRI time series. Mono-fractality is assessed in terms of the Hurst exponent and the noise variance. We then investigate potential local stationarity of the Hurst exponent in MM data and present a uniformly most powerful test for its time constancy. A novel bootstrap approach is presented as an alternative to the normal assumption and its advantages are discussed. From several datasets investigated, we specifically show that the 1/f model is particularly suited to describe color in MM nose. We also demonstrate that even if most of the brain voxels are mono-fractal, there are many locations in the brain where time constancy of the Hurst exponent is violated, ie, the noise structure is poly-fractal.
机译:功能磁共振成像(FMRI)时间序列通常展示串行依赖性。这种内源性自动相关通常呈现由1 / F类似的电力法描述的远程依赖性。我们提出了一种基于小波的基于小波的方法,用于表征短介质长度(短频)FMRI时间序列中的噪声结构。在赫斯特指数和噪声方差方面评估单次交换。然后,我们调查MM数据中赫斯特指数的潜在本地实例性,并为其时间恒定呈现均匀最强大的测试。一种新的引导方法作为正常假设的替代方案呈现,并且讨论了其优点。从调查的多个数据集中,我们特别表明1 / F型号特别适合描述MM鼻子中的颜色。我们还表明,即使大多数脑体素是单分形,大脑中也存在许多位置,其中围绕肿瘤指数的时间恒定的时间,即噪声结构是多分形的。

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