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Infrared spectrum blind deconvolution algorithm via learned dictionaries and sparse representation

机译:基于学习词典和稀疏表示的红外光谱盲解卷积算法

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摘要

Band overlap and random noise are a serious problem in infrared spectra, especially for aging spectrometers. In this paper, we have presented a simple method for spectrum restoration. The proposed method is based on local operations, and involves sparse decompositions of each spectrum piece under an evolving overcomplete dictionary, and a simple averaging calculation. The content of the dictionary is of prime importance for the deconvolution process. Quantitative assessments of this technique on simulated and real spectra show significant improvements over the state-of-the-art methods. The proposed method can almost eliminate the effects of instrument aging. The features of these deconvoluted infrared spectra are more easily extracted, aiding the interpretation of unknown chemical mixtures. (C) 2016 Optical Society of America
机译:频带重叠和随机噪声是红外光谱中的一个严重问题,尤其是对于老化的光谱仪而言。在本文中,我们提出了一种简单的频谱恢复方法。所提出的方法是基于局部运算的,并且涉及在不断发展的超完备字典下每个频谱段的稀疏分解以及简单的平均计算。字典的内容对于反卷积过程至关重要。在模拟和真实光谱上对该技术进行的定量评估显示,与现有技术相比,该方法有显着改进。所提出的方法几乎可以消除仪器老化的影响。这些反褶积红外光谱的特征更容易提取,有助于解释未知的化学混合物。 (C)2016美国眼镜学会

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