This paper extends prior work on an auditory inspired adaptive synchrony capture filterbank (SCFB) architecture for acoustic frequency tracking. The earlier SCFB architecture used a weighted sum of frequency discriminator loop (FDL) and a phased locked loop (PLL) to track frequency components precisely. The key improvements in this paper are the introduction of adaptive FDL and PLL weights and the incorporation of a place theory-based mechanism to preferentially activate fewer filters, resulting in enhanced biomimicry and computational efficiency. The effectiveness of these improvements is demonstrated using synthetic time-varying signals, simultaneously highlighting the algorithm's robust denoising capability under challenging noise conditions.
Vijay Kumar Peddinti (Fri,) studied this question.
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