Time-frequency Analysis Based on the S-transform

نویسندگان

  • Lin Yun
  • Xu Xiaochun
  • Li Bin
  • R. G. Stockwell
چکیده

S-transform is a new time-frequency analysis method, which is deduced from short-time Fourier transform and continue Wavelet transform. It has much better performance than traditional time-frequency method. Therefore, in this paper, the basic principle of is briefly introduced and the relationships between is analyzed by theoretical derivation. According to the simulation experiments, the time-frequency space characteristics of short-time Fourier transform, Wigner-Ville distribution and S-transform are contrasted. As the results shown, the window of S-transform has a progressive frequency dependent resolution. So the Stransform has a great flexibility and utility in the processing of non-stationary signal. Compare with the time-frequency spectrum of three different analysis methods under various noise conditions, it is obvious that S-transform has much better anti-noise performance than that of traditional methods for non-stationary signal processing. Based on the superior timefrequency resolution, the S-transform spectrum can be used to describe the structure of incoming signal effectively.

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تاریخ انتشار 2013