Citation

BibTex format

@article{Lee:2026:10.1121/10.0043993,
author = {Lee, KY and Meyer-Kahlen, N and Schlecht, SJ and Välimäki, V},
doi = {10.1121/10.0043993},
journal = {J Acoust Soc Am},
pages = {5527--5540},
title = {Solving room impulse response inverse problems using flow matching with analytic Wiener denoisera).},
url = {http://dx.doi.org/10.1121/10.0043993},
volume = {159},
year = {2026}
}

RIS format (EndNote, RefMan)

TY  - JOUR
AB - Room impulse response (RIR) estimation naturally arises as a class of inverse problems, including denoising and deconvolution. While recent approaches often rely on supervised learning or learned generative priors, such methods require large amounts of training data and may generalize poorly outside the training distribution. In this work, we present RIRFlow, a training-free Bayesian framework for RIR inverse problems using flow matching. We derive a flow-consistent analytic prior from the statistical structure of RIRs, eliminating the need for data-driven priors. Specifically, we model RIR as a Gaussian process with exponentially decaying variance, which yields a closed-form Wiener denoiser. This analytic denoiser is integrated as a prior in an existing flow-based inverse solver, where inverse problems are solved via guided posterior sampling. Furthermore, we extend the solver to nonlinear and non-Gaussian inverse problems via a local Gaussian approximation of the guided posterior, and empirically demonstrate that this approximation remains effective in practice. Experiments on real RIRs across different inverse problems demonstrate robust performance, highlighting the effectiveness of combining a classic RIR model with the recent flow-based generative inference.
AU - Lee,KY
AU - Meyer-Kahlen,N
AU - Schlecht,SJ
AU - Välimäki,V
DO - 10.1121/10.0043993
EP - 5540
PY - 2026///
SP - 5527
TI - Solving room impulse response inverse problems using flow matching with analytic Wiener denoisera).
T2 - J Acoust Soc Am
UR - http://dx.doi.org/10.1121/10.0043993
UR - https://www.ncbi.nlm.nih.gov/pubmed/42312846
VL - 159
ER -