ASSDJul 15, 2021

Filtered Noise Shaping for Time Domain Room Impulse Response Estimation From Reverberant Speech

arXiv:2107.07503v156 citations
Originality Incremental advance
AI Analysis

This work addresses audio post-production and augmented reality by enabling efficient room acoustic matching, though it is incremental as it builds on existing deep learning methods.

The paper tackled the problem of estimating room impulse responses from reverberant speech to enable realistic audio transformation, resulting in a model that accurately matches target room parameters and perceptual characteristics.

Deep learning approaches have emerged that aim to transform an audio signal so that it sounds as if it was recorded in the same room as a reference recording, with applications both in audio post-production and augmented reality. In this work, we propose FiNS, a Filtered Noise Shaping network that directly estimates the time domain room impulse response (RIR) from reverberant speech. Our domain-inspired architecture features a time domain encoder and a filtered noise shaping decoder that models the RIR as a summation of decaying filtered noise signals, along with direct sound and early reflection components. Previous methods for acoustic matching utilize either large models to transform audio to match the target room or predict parameters for algorithmic reverberators. Instead, blind estimation of the RIR enables efficient and realistic transformation with a single convolution. An evaluation demonstrates our model not only synthesizes RIRs that match parameters of the target room, such as the $T_{60}$ and DRR, but also more accurately reproduces perceptual characteristics of the target room, as shown in a listening test when compared to deep learning baselines.

Code Implementations1 repo
Foundations

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