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首页> 外文期刊>Journal of magnetic resonance >Time-domain Bayesian detection and estimation of noisy damped sinusoidal signals applied to NMR spectroscopy
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Time-domain Bayesian detection and estimation of noisy damped sinusoidal signals applied to NMR spectroscopy

机译:时域贝叶斯检测和噪声衰减正弦信号在NMR光谱中的估计

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摘要

The problem of model detection and parameter estimation for noisy signals arises in different areas of science and engineering including audio processing, seismology, electrical engineering, and NMR spectroscopy. We have adopted the Bayesian modeling framework to jointly detect and estimate signal resonances. This considers a model of the time-domain complex free induction decay (FID) signal as a sum of exponentially damped sinusoidal components. The number of model components and component parameters are considered unknown random variables to be estimated. A Reversible Jump Markov Chain Monte Carlo technique is used to draw samples from the joint posterior distribution on the subspaces of different dimensions. The proposed algorithm has been tested on synthetic data, the H-1 NMR FID of a standard of L-glutamic acid and a blood plasma sample. The detection and estimation performance is compared with Akaike information criterion (AIC), minimum description length (MDL) and the matrix pencil method. The results show the Bayesian algorithm superior in performance especially in difficult cases of detecting low-amplitude and strongly overlapping resonances in noisy signals. (C) 2007 Elsevier Inc. All rights reserved.
机译:噪声信号的模型检测和参数估计问题出现在科学和工程学的不同领域,包括音频处理,地震学,电气工程和NMR光谱学。我们采用贝叶斯建模框架来联合检测和估计信号共振。这将时域复自由感应衰减(FID)信号模型视为指数阻尼正弦分量的总和。模型组件的数量和组件参数被视为未知的随机变量,需要估计。可逆跳跃马尔可夫链蒙特卡罗技术用于从联合后验分布中提取不同维度子空间上的样本。该算法已在合成数据,L-谷氨酸标准品的H-1 NMR FID和血浆样品中进行了测试。将检测和估计性能与Akaike信息标准(AIC),最小描述长度(MDL)和矩阵笔方法进行比较。结果表明,贝叶斯算法的性能优越,尤其是在检测噪声信号中的低振幅和强重叠共振的困难情况下。 (C)2007 Elsevier Inc.保留所有权利。

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