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Feature Extraction by Multi-Scale Principal Component Analysis and Classification in Spectral Domain 被引量:2

Feature Extraction by Multi-Scale Principal Component Analysis and Classification in Spectral Domain
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摘要 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. 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.
出处 《Engineering(科研)》 2013年第10期268-271,共4页 工程(英文)(1947-3931)
关键词 MULTI-SCALE Principal Component Analysis DISCRETE WAVELET TRANSFORM Feature Extraction Signal CLASSIFICATION Empirical CLASSIFICATION Multi-Scale Principal Component Analysis Discrete Wavelet Transform Feature Extraction Signal Classification Empirical Classification
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