scholarly journals Peak picking NMR spectral data using non-negative matrix factorization

2014 ◽  
Vol 15 (1) ◽  
pp. 46 ◽  
Author(s):  
Suhas Tikole ◽  
Victor Jaravine ◽  
Vladimir Rogov ◽  
Volker Dötsch ◽  
Peter Güntert
Author(s):  
Y. Liu ◽  
S. Lyu ◽  
M. Hou ◽  
Q. Yin

Since the colour in painting cultural relics observed by our naked eyes or hyperspectral cameras is usually a mixture of several kinds of pigments, the mixed pigments analysis will be an important subject in the field of ancient painting conservation and restoration. This paper aims to find a more effective method to confirm the types of every pure pigment from mixture on the surface of paintings. Firstly, we adopted two kinds of blind source separation algorithms, which are independent component analysis and non-negative matrix factorization, to extract the pure pigment component from mixed spectrum respectively. Moreover, we matched the separated pure spectrum with the pigments spectra library built by our team to determine the pigment type. Furthermore, three kinds of data including simulation data, mixed pigments spectral data measured in laboratory, and the spectral data of an ancient painting were chosen to evaluate the performance of the different algorithms. And the accuracy was compared between the two algorithms. Finally, the experimental results show that non-negative matrix factorization method is more suitable for endmember extraction in the field of ancient painting conservation and restoration.


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