Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

PhaseCoder: Microphone Geometry-Agnostic Spatial Audio Understanding for Multimodal LLMs

About

Current multimodal LLMs process audio as a mono stream, ignoring the rich spatial information essential for embodied AI. Existing spatial audio models, conversely, are constrained to fixed microphone geometries, preventing deployment across diverse devices. We present PhaseCoder, a transformer-only spatial audio encoder that is agnostic to microphone geometry. PhaseCoder takes raw multichannel audio and microphone coordinates as inputs to perform localization and produces robust spatial embeddings. We demonstrate that Gemma 3n LLM can be fine-tuned to reason over "Spatial Audio Tokens" produced by PhaseCoder. We show our encoder achieves state-of-the-art results on microphone-invariant localization benchmarks and, for the first time, enables an LLM to perform complex spatial reasoning and targeted transcription tasks from an arbitrary microphone array.

Artem Dementyev, Wazeer Zulfikar, Sinan Hersek, Pascal Getreuer, Anurag Kumar, Vivek Kumar• 2026

Related benchmarks

TaskDatasetResultRank
LocalizationSynthetic
MAE Azimuth (°)3.08
5
LocalizationRSL 2019
MAE Azimuth (°)5.53
5
Spatial TranscriptionSynthetic
MAE (Azimuth, °)3.09
5
Spatial TranscriptionRSL 2019
MAE Azimuth5.53
5
ReasoningSynthetic
Accuracy76.76
4
ReasoningRSL 2019
Accuracy0.7383
4
Targeted Spatial UnderstandingSynthetic
Accuracy44.92
4
Targeted Spatial UnderstandingRSL 2019
Accuracy52.73
4
Azimuth estimationRSL 2019 (dev)
MAE4.33
3
Azimuth estimationLOCATA avg (dev test)
MAE7.44
3
Showing 10 of 11 rows

Other info

Follow for update