TL;DR
MESH2IR is a neural network that efficiently generates accurate acoustic impulse responses for complex 3D indoor scenes represented by meshes, enabling real-time audio applications.
Contribution
This work introduces a novel mesh-based neural network with a unique training technique that significantly accelerates IR generation for complex scenes.
Findings
Over 200x faster than geometric acoustic algorithms
Can generate 10,000+ IRs per second on GPU
Achieves less than 10% error in acoustic metrics
Abstract
We propose a mesh-based neural network (MESH2IR) to generate acoustic impulse responses (IRs) for indoor 3D scenes represented using a mesh. The IRs are used to create a high-quality sound experience in interactive applications and audio processing. Our method can handle input triangular meshes with arbitrary topologies (2K - 3M triangles). We present a novel training technique to train MESH2IR using energy decay relief and highlight its benefits. We also show that training MESH2IR on IRs preprocessed using our proposed technique significantly improves the accuracy of IR generation. We reduce the non-linearity in the mesh space by transforming 3D scene meshes to latent space using a graph convolution network. Our MESH2IR is more than 200 times faster than a geometric acoustic algorithm on a CPU and can generate more than 10,000 IRs per second on an NVIDIA GeForce RTX 2080 Ti GPU for a…
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Taxonomy
MethodsConvolution
