Abstract:Spectral pre-processing is an important link in the establishment of spectral measurement metrology model, and at present, many spectral preprocessing methods have appeared. Based on the purpose and effect of the pretreatment, the origin, developments, theories, characterizes and actual application examples of common spectral preprocessing methods in scatter correction, scaling, smoothing, baseline correction and noise filtering areas were reviewed. According to the problems existing in the application of preprocessing methods, the principle, developments and characteristics of the ensemble strategy of preprocessing methods were discussed, and its research trend and development prospect were analyzed, for providing basis and references for the selection of spectral preprocessing methods and strategies.
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