Title: Weighted linear prediction for speech analysis in noisy conditions

نویسندگان

  • Jouni Pohjalainen
  • Heikki Kallasjoki
  • Paavo Alku
  • Kalle J. Palomaki
  • Mikko Kurimo
  • Kalle J. Palomäki
چکیده

Following earlier work, we modify linear predictive (LP) speech analysis by including temporal weighting of the squared prediction error in the model optimization. In order to focus this so called weighted LP model on the least noisy signal regions in the presence of stationary additive noise, we use shorttime signal energy as the weighting function. We compare the noisy spectrum analysis performance of weighted LP and its recently proposed variant, the latter guaranteed to produce stable synthesis models. As a practical test case, we use automatic speech recognition to verify that the weighted LP methods improve upon the conventional FFT and LP methods by making spectrum estimates less prone to corruption by additive noise.

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تاریخ انتشار 2016