A Fourier Series Based Data Compression Model For Acoustic Transfer Function

Yoshiaki Asahara, Kohich Matsuda,Hirofumi Nakajima,Kazuhiro Nakadai

2020 IEEE/SICE INTERNATIONAL SYMPOSIUM ON SYSTEM INTEGRATION (SII)(2020)

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摘要
This paper addresses a modeling of acoustic transfer function using Fourier series expansion. transfer function set consisting of many transfer functions. which are obtained by measurements or geometrical calculations, is usually required for applications like sound source localization and separation. The data size of the set is often so large because of the Tine resolution. Such a large set is unsuitable for embedded systems. e.g. robots and mobile phones doe to the limitation of their storage size and computational resources. To mark! this problem, a novel modeling of acoustic transfer him:lion is proposed. which reduces the size of the transfer function set smaller enough for embedded systems by means of function representation based on Fourier series. Since the proposed modeling is based on the function representation, the interpolation between two adjacent measured transfer Functions is naturally obtained. This allows the line resolution in sound source localization and separation compared to the application that any conventional transfer function sets are used. The error of the proposed model was about 2 dB in amplitude and 15 degrees in phase on average in the numerical simulation. The proposed model is also evaluated in sound source localization. The experimental results indicated that the localization error was 3.5 even though the memory usage and the calculation lime decreased 97% and 24% respeclively. It hen the conventional model results was 100%.
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关键词
adjacent measured transfer functions,sound source localization,conventional transfer function sets,data compression model,acoustic transfer function,Fourier series expansion,transfer function set,function representation
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