| Literature DB >> 28163663 |
Milutin Stanaćević1, Shuo Li1, Gert Cauwenberghs2.
Abstract
A parallel micro-power mixed-signal VLSI implementation of independent component analysis (ICA) with reconfigurable outer-product learning rules is presented. With the gradient sensing of the acoustic field over a miniature microphone array as a pre-processing method, the proposed ICA implementation can separate and localize up to 3 sources in mild reverberant environment. The ICA processor is implemented in 0.5 µm CMOS technology and occupies 3 mm × 3 mm area. At 16 kHz sampling rate, ASIC consumes 195 µW power from a 3 V supply. The outer-product implementation of natural gradient and Herault-Jutten ICA update rules demonstrates comparable performance to benchmark FastICA algorithm in ideal conditions and more robust performance in noisy and reverberant environment. Experiments demonstrate perceptually clear separation and precise localization over wide range of separation angles of two speech sources presented through speakers positioned at 1.5 m from the array on a conference room table. The presented ASIC leads to a extreme small form factor and low power consumption microsystem for source separation and localization required in applications like intelligent hearing aids and wireless distributed acoustic sensor arrays.Entities:
Keywords: Blind source separation; Independent component analysis; Micropower techniques
Year: 2016 PMID: 28163663 PMCID: PMC5287422 DOI: 10.1109/TCSI.2016.2556122
Source DB: PubMed Journal: IEEE Trans Circuits Syst I Regul Pap ISSN: 1549-8328 Impact factor: 3.605