Feature Extraction by Multi-Scale Principal Component Analysis and Classification in Spectral Domain

  • Xie S
  • Lawnizak A
  • Lio P
  • et al.
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Abstract

Feature extraction of signals plays an important role in classification problems because of data dimension reduction property and potential improvement of a classification accuracy rate. Principal component analysis (PCA), wavelets transform or Fourier transform methods are often used for feature extraction. In this paper, we propose a multi-scale PCA, which combines discrete wavelet transform, and PCA for feature extraction of signals in both the spatial and temporal domains. Our study shows that the multi-scale PCA combined with the proposed new classification methods leads to high classification accuracy for the considered signals.

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Xie, S., Lawnizak, A. T., Lio, P., & Krishnan, S. (2013). Feature Extraction by Multi-Scale Principal Component Analysis and Classification in Spectral Domain. Engineering, 05(10), 268–271. https://doi.org/10.4236/eng.2013.510b056

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