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High-Order Statistical Blind Deconvolution of Spectroscopic Data with a Gauss-Newton Algorithm

机译:高斯-牛顿算法对光谱数据进行高阶统计盲反卷积

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摘要

The spectroscopic data recorded by a dispersion spectrophotometer are usually degraded by the response function of the instrument. To improve the resolving power, double or triple cascade spectrophotometers and narrow slits have been employed, but the total flux of the radiation available decreases accordingly, resulting in a lower signal-to-noise ratio (SNR) and a longer measurement time. However, the spectral resolution can be improved by mathematically removing the effect of the instrument response function. A high-order statistical Gauss-Newton algorithm is proposed to blindly deconvolve the measured spectroscopic data. The true spectrum and the instrument response function are estimated simultaneously. Experiments on artificial and real measured spectroscopic data demonstrate the feasibility of this method.
机译:色散分光光度计记录的光谱数据通常会因仪器的响应功能而降低。为了提高分辨能力,已经使用了双联或三联级联分光光度计和狭窄的狭缝,但是可用辐射的总通量相应降低,导致较低的信噪比(SNR)和较长的测量时间。但是,可以通过数学方式消除仪器响应函数的影响来提高光谱分辨率。提出了一种高阶统计高斯-牛顿算法,对测得的光谱数据进行盲卷积。同时估算真实频谱和仪器响应函数。人工和实测光谱数据实验证明了该方法的可行性。

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