Algorithms for Tracking Formant Frequencies of a Continuous Speech with Speaker Variability
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Abstract
Exposure to loud sounds can cause damage to the inner ear, leading to degradation of the neural response to speech and to formant frequencies in particular. This may result in decreased intelligibility of speech. An amplification scheme for hearing aids, called Contrast Enhanced
Frequency Shaping (CEFS), may improve speech perception for ears with
sound-induced hearing damage. CEFS takes into account acrossfrequency
distortions introduced by the impaired ear and requires accurate and robust formant frequency estimates to allow dynamic,
speech-spectrum-dependent amplification of speech in hearing aids.
Several algorithms have been developed for extracting the formant
information from speech signals, however most of these algorithms are
either not robust in real-life noise environments or are not suitable for
real-time implementation. Two algorithms are discussed in the present
work. One is Robust formant tracking algorithm and other is Recursive
least square algorithm (RLS). The first algorithm achieves formant
extraction from continuous speech by using a time-varying adaptive filter
bank to track and estimate individual formant frequencies. The formant
tracker incorporates an adaptive voicing detector and a gender detector
for robust formant extraction from continuous speech. And the second
algorithm is based on recursive least square values. Forgetting factor
approach is used for estimating formant frequencies with RLS algorithm.
Algorithms are tested for both male and female speakers in the presence
of background noise. Thorough testing of the algorithms using various
speech sentences has shown promising results over a wide range of
signal to noise ratio’s (SNR’s) for various types of background noises.
