PLP 2 Autoregressive modeling of auditory - like 2 - D spectro - temporal patterns

نویسندگان

  • Marios Athineos
  • Hynek Hermansky
  • Daniel P.W. Ellis
چکیده

The temporal trajectories of the spectral energy in auditory critical bands over 250 ms segments are approximated by an all-pole model, the time-domain dual of conventional linear prediction. This quarter-second auditory spectro-temporal pattern is further smoothed by iterative alternation of spectral and temporal all-pole modeling. Just as Perceptual Linear Prediction (PLP) uses an autoregressive model in the frequency domain to estimate peaks in an auditory-like short-term spectral slice, PLP uses all-pole modeling in both time and frequency domains to estimate peaks of a two-dimensional spectrotemporal pattern, motivated by considerations of the auditory system.

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تاریخ انتشار 2004