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Novel-View Acoustic Synthesis

About

We introduce the novel-view acoustic synthesis (NVAS) task: given the sight and sound observed at a source viewpoint, can we synthesize the sound of that scene from an unseen target viewpoint? We propose a neural rendering approach: Visually-Guided Acoustic Synthesis (ViGAS) network that learns to synthesize the sound of an arbitrary point in space by analyzing the input audio-visual cues. To benchmark this task, we collect two first-of-their-kind large-scale multi-view audio-visual datasets, one synthetic and one real. We show that our model successfully reasons about the spatial cues and synthesizes faithful audio on both datasets. To our knowledge, this work represents the very first formulation, dataset, and approach to solve the novel-view acoustic synthesis task, which has exciting potential applications ranging from AR/VR to art and design. Unlocked by this work, we believe that the future of novel-view synthesis is in multi-modal learning from videos.

Changan Chen, Alexander Richard, Roman Shapovalov, Vamsi Krishna Ithapu, Natalia Neverova, Kristen Grauman, Andrea Vedaldi• 2023

Related benchmarks

TaskDatasetResultRank
Novel-view Sound SynthesisSoundspace-Ambient (Seen Scenes)
STFT3.74
15
Novel-view Sound SynthesisSoundspace-Ambient (Unseen Scenes)
STFT3.438
15
Novel View Acoustic SynthesisSoundSpaces-NVAS Single Environment
Mag0.142
12
Novel-view Sound SynthesisN2S Benchmark real-world scene
STFT Error1.201
9
Binaural audio synthesisN2S (test)
STFT1.201
9
Novel View Acoustic SynthesisRWAVS Office
MAG1.049
8
Novel View Acoustic SynthesisRWAVS House
MAG2.502
8
Novel View Acoustic SynthesisRWAVS Apartment
MAG Score2.6
8
Novel View Acoustic SynthesisRWAVS Outdoors
MAG1.169
8
Novel View Acoustic SynthesisRWAVS Overall
MAG1.83
8
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