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Application of Wavelet Transforms to Experimental Spectra: smoothing, Denoising, and Data Set Compression

机译:小波变换在实验光谱中的应用:平滑,去噪和数据集压缩

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Various methods have been proposed for smoothing and denoising data sets, but a distinction is seldom made between the two procedures. Here, we distinguish between them in the signal domain and its transformed domain. Smoothing removes components (of the transformed signal) occurring in the high end of the transformed domain regardless of amplitude. Denoising removes small-amplitude components occurring in the transformed domain regardless of position. Methods for smoothing and denoising are presented which depend on the recently developed discrete wavelet (DW) transform are filtering techniques that are applied to the transformed data set, prior to back-transforming it to the signal domain. These DW techniques are compared with other familiar methods of smoothing (Savitzky-Golay) and denoising through filtering(Fourier transform).Preparatory to improving experimental data sets, synthetic data sets, comprised, of ideal functions to which a known amount of noise has been added, are examined. The filter cutoffs are systematically explored, and DW techniques are shown to be highly successful for data sets with great dynamic range. In the minority of canes, smoothing and denoising are nearly interchangeable, It is shown that DW smoothing compresses with the most predictable results, whereas DW denoising compressed with minimal distortion of the signal.
机译:已经提出了各种方法来对数据集进行平滑和去噪,但是在这两个过程之间很少有区别。在这里,我们在信号域及其变换域中对其进行区分。平滑消除了在变换域的高端中出现的(变换信号的)分量,而与幅度无关。去噪去除了在变换域中出现的小振幅分量,而与位置无关。提出了用于平滑和去噪的方法,该方法取决于最近开发的离散小波(DW)变换,该技术是在将变换后的数据集反变换为信号域之前应用于变换后的数据集的滤波技术。将这些DW技术与其他熟悉的平滑方法(Savitzky-Golay)和通过滤波去噪的方法(Fourier变换)进行了比较。为改进实验数据集,在准备改进了实验数据集的基础上,合成了具有理想功能的合成数据集,已将已知数量的噪声引入其中。添加,进行检查。系统地研究了滤波器的截止频率,DW技术对于动态范围大的数据集非常成功。在少数手杖中,平滑和去噪几乎是可以互换的,这表明DW平滑以最可预测的结果压缩,而DW去噪以最小的信号失真进行压缩。

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