A review on spectral data preprocessing techniques for machine learning and quantitative analysis
Zhejiang Library · Zhejiang University
Abstract
Spectroscopic techniques are indispensable for material characterization, yet their weak signals remain highly prone to interference from environmental noise, instrumental artifacts, sample impurities, scattering effects, and radiation-based distortions (e.g., fluorescence and cosmic rays). These perturbations not only significantly degrade measurement accuracy but also impair machine learning-based spectral analysis by introducing artifacts and biasing feature extraction. This review provides a systematic evaluation of critical spectral preprocessing methods-encompassing cosmic ray removal, baseline correction, scattering correction, normalization, filtering and smoothing, spectral derivatives, and advanced…
Citation impact
- FWCI
- 51.22
- Percentile
- 100%
- References
- 201
Authors
1Topics & keywords
- Preprocessor
- Spectral analysis
- Computer science
- Data science
- Artificial intelligence
- Machine learning
- Physics
- Spectroscopy