The least squares fitting algorithm is the most commonly used algorithm in Raman spectroscopy. In this paper, however, we show that it is sensitive to variations in the background signal when the signal of interest is weak. To address this problem, we propose a novel algorithm to analyze measured spectra in Raman spectroscopy. The method is a hybrid least squares and principal component analysis algorithm. It explicitly accounts for any variations expected in the reference spectra used in the signal decomposition. We compare the novel algorithm to the least squares method with a low-order polynomial residual model, and demonstrate the novel algorithm's superior performance by comparing quantitative error metrics. Our experiments use both simulated data and data acquired from an in vitro solution of Raman-enhanced gold nanoparticles.
机构:
Okayama Univ Sci, Dept Management, Kita Ku, 1-1 Ridaicho, Okayama 7000005, JapanOkayama Univ Sci, Dept Management, Kita Ku, 1-1 Ridaicho, Okayama 7000005, Japan
Mori, Yuichi
Iizuka, Masaya
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Okayama Univ, Inst Educ & Student Serv, Kita Ku, 2-1-1 Tsushima Naka, Okayama 7008530, JapanOkayama Univ Sci, Dept Management, Kita Ku, 1-1 Ridaicho, Okayama 7000005, Japan
机构:
College of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, ChinaCollege of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, China
Meng, Fanchi
Cai, Cheng
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College of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, ChinaCollege of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, China
Cai, Cheng
Li, Shuqin
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College of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, ChinaCollege of Information Engineering, Northwest A and F University, No. 3, Taicheng Road, Yangling 712100, China