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Maximum-likelihood based 3D acoustical signature estimation

机译:基于最大似然的3D声学特征估计

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摘要

An audio recording, made in a real environment, carries an acoustical signature which changes according to the acoustical characteristics of the environment and the recording positions. This signature which is similar to a 3D room impulse response contains the directions, levels and arrival times of the direct source and reflections. Although it is easy to obtain reverberant recordings by convolving clean recordings with the acoustical signature, estimating the signature from any recording is a difficult inverse problem. Acoustical signature estimation is important in acoustical analysis, audio forensics for authentication, room size and shape estimation and improving speech intelligibility by dereverberation. In this work, the statistical modelling of intensity vector directions, which are obtained from compact microphone array recordings is made. Obtained statistical distribution is used for reducing the reverberation based on the maximum-likelihood estimation method. This dereverberated sound enables deconvolving the reverberant recordings to estimate the acoustical signature.
机译:在真实环境中制作的音频记录带有声学签名,该签名会根据环境的声学特性和录制位置而变化。该签名类似于3D房间脉冲响应,包含直接源和反射的方向,级别和到达时间。尽管通过将干净的录音与声学签名进行卷积很容易获得混响录音,但是从任何录音中估计签名都是一个困难的反问题。声学签名估计在声学分析,身份验证的音频取证,房间大小和形状估计以及通过去混响改善语音清晰度方面很重要。在这项工作中,对强度矢量方向进行了统计建模,该强度矢量方向是从紧凑的麦克风阵列记录中获得的。基于最大似然估计方法,将获得的统计分布用于减少混响。这种去纤维化的声音可以使混响录音解卷积以估计声学特征。

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