Study on Identification of 100% Cotton Fabric by Raman Spectroscopy and Random Forest

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Abstract:

The analytical method was established for identification of 100% cotton fabric by Raman spectroscopy. 100 samples were analyzed directly by Raman spectrometer with a 1064nm laser source. 1120-1180 cm-1,1320-1400cm-1 and 1560-1600cm-1 were selected as important spectral regions by Random forest method. A Random forest model was established with 65 trees and 80 training samples. The result showed that different kind of textile can be identified by Raman spectroscopy coupled with random forest method.

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Advanced Materials Research (Volumes 1033-1034)

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439-443

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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