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Component recognition with three-dimensional fluorescence spectra based on non-negative matrix factorization

机译:基于非负矩阵分解的三维荧光光谱成分识别

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摘要

Non-negative matrix factorization (NMF) is a widely used approach in signal processing. In this work, we apply it to the component recognition of mixtures with multicomponent three-dimensional fluorescence spectra. Compared with the popular PARAFAC for component recognition, NMF has the following advantages: on one hand, the decomposed spectra are three dimensional, and thus, more information can be obtained, which is beneficial for component recognition; on the other hand, the decomposed spectra are non-negative and thus have a certain physical significance. More importantly, we propose a type of integrated similarity indices for the three-dimensional fluorescence spectra, which, by construction, is good at component recognition from overlapping fluorescence spectra. Experiment results demonstrate that NMF combined with integrated similarity index provides an effective method for component recognition of multicomponent three-dimensional overlapping fluorescence spectra.
机译:非负矩阵分解(NMF)是信号处理中广泛使用的方法。在这项工作中,我们将其应用于具有多组分三维荧光光谱的混合物的组分识别。与流行的用于成分识别的PARAFAC相比,NMF具有以下优点:一方面,分解后的光谱是三维的,因此可以获得更多的信息,有利于成分识别。另一方面,分解的光谱是非负的,因此具有一定的物理意义。更重要的是,我们为三维荧光光谱提出了一种综合的相似性指标,通过构建,该指标在重叠荧光光谱中的成分识别方面表现出色。实验结果表明,NMF与综合相似性指标相结合为多组分三维重叠荧光光谱的组分识别提供了一种有效的方法。

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