降低基于声音合成的空间采样要求

Cac T. Nguyen, R. Morrison, M. Do
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引用次数: 0

摘要

我们研究了从一组音频传感器的记录中合成任意位置和时间的声场问题。根据先前对声源位置和频率的估计,例如使用自适应声源定位获得的估计,我们表征了声场频谱的时空支持。与不使用源的事先估计相比,这种特性可以减少空间采样要求。基于估计的光谱支持度,我们推导了一个自适应插值核,利用粗糙空间采样网格上的传感器测量值来重建声场函数。仿真结果表明,采用自适应插值方法可以在降低采样要求的情况下获得增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduction of Spatial Sampling Requirement in Sound-Based Synthesis
We study the problem of synthesizing the sound field at arbitrary locations and times from the recordings of an array of audio sensors. Given prior estimates of the locations and frequencies of the sound sources, such as those obtained using adaptive source localization, we characterize the spatio-temporal support of the sound field spectrum. This characterization allows the spatial sampling requirements to be reduced in comparison to when no prior estimates of the sources are utilized. We derive an adaptive interpolation kernel, based on the estimated spectral support, to reconstruct the sound-field function using measurements from sensors on a coarse spatial-sampling grid. Simulation results demonstrate the gain achieved in reduced sampling requirements by using the proposed adaptive interpolation approach.
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