Improving sound event detecting in sound source localization using TDOA method
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https://doi.org/10.54939/1859-1043.j.mst.80.2022.60-70Keywords:
Sound Source Localization; TDOA; ICA.Abstract
This paper presents several research results that enhance TDOA-based sound localization accuracy with the priority of the source of interest. In which, a solution is proposed to improve the quality of audio event detection based on the correlation filter combined with signal preprocessing by the independent component analysis technique ICA. From analysis and discussions are made on that design and using Monte Carlo simulations with the data collected in a real environment, the results show the efficiency of our proposed method in TDOA-based localization.
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