ASLGSDMar 13, 2023

Blind Acoustic Room Parameter Estimation Using Phase Features

arXiv:2303.07449v114 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses the challenge of acoustic modeling in field settings for applications like audio processing, though it is incremental by extending recent approaches with phase features.

The paper tackled the problem of blindly estimating room acoustic parameters like volume and RT60 from noisy audio by proposing novel phase-related features to complement existing magnitude-based methods, achieving improved performance across various acoustic spaces.

Modeling room acoustics in a field setting involves some degree of blind parameter estimation from noisy and reverberant audio. Modern approaches leverage convolutional neural networks (CNNs) in tandem with time-frequency representation. Using short-time Fourier transforms to develop these spectrogram-like features has shown promising results, but this method implicitly discards a significant amount of audio information in the phase domain. Inspired by recent works in speech enhancement, we propose utilizing novel phase-related features to extend recent approaches to blindly estimate the so-called "reverberation fingerprint" parameters, namely, volume and RT60. The addition of these features is shown to outperform existing methods that rely solely on magnitude-based spectral features across a wide range of acoustics spaces. We evaluate the effectiveness of the deployment of these novel features in both single-parameter and multi-parameter estimation strategies, using a novel dataset that consists of publicly available room impulse responses (RIRs), synthesized RIRs, and in-house measurements of real acoustic spaces.

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