DS1 spectrogram: Bridging the Perception Gap: A Lightweight Coarse-to-Fine Architecture for Edge Audio Systems

Bridging the Perception Gap: A Lightweight Coarse-to-Fine Architecture for Edge Audio Systems

January 22, 20262601.15676v1

Authors

Hengfan Zhang,Yueqian Lin,Hai Helen Li,Yiran Chen

Abstract

Deploying Audio-Language Models (Audio-LLMs) on edge infrastructure exposes a persistent tension between perception depth and computational efficiency. Lightweight local models tend to produce passive perception - generic summaries that miss the subtle evidence required for multi-step audio reasoning - while indiscriminate cloud offloading incurs unacceptable latency, bandwidth cost, and privacy risk.

We propose CoFi-Agent (Tool-Augmented Coarse-to-Fine Agent), a hybrid architecture targeting edge servers and gateways. It performs fast local perception and triggers conditional forensic refinement only when uncertainty is detected.

CoFi-Agent runs an initial single-pass on a local 7B Audio-LLM, then a cloud controller gates difficult cases and issues lightweight plans for on-device tools such as temporal re-listening and local ASR. On the MMAR benchmark, CoFi-Agent improves accuracy from 27.20% to 53.60%, while achieving a better accuracy-efficiency trade-off than an always-on investigation pipeline.

Overall, CoFi-Agent bridges the perception gap via tool-enabled, conditional edge-cloud collaboration under practical system constraints.

Resources

Stay in the loop

Get tldr.takara.ai to Your Email, Everyday.

tldr.takara.aiHome·Daily at 6am UTC·© 2026 takara.ai Ltd

Content is sourced from third-party publications.