Tuochao Chen
2025
Proactive Hearing Assistants that Isolate Egocentric Conversations
Guilin Hu
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Malek Itani
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Tuochao Chen
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Shyamnath Gollakota
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
We introduce proactive hearing assistants that automatically identify and separate the wearer’s conversation partners, without requiring explicit prompts. Our system operates on egocentric binaural audio and uses the wearer’s self-speech as an anchor, leveraging turn-taking behavior and dialogue dynamics to infer conversational partners and suppress others. To enable real-time, on-device operation, we propose a dual-model architecture: a lightweight streaming model runs every 12.5 ms for low-latency extraction of the conversation partners, while a slower model runs less frequently to capture longer-range conversational dynamics. Results on real-world 2- and 3-speaker conversation test sets, collected with binaural egocentric hardware from 11 participants totaling 6.8 hours, show generalization in identifying and isolating conversational partners in multi-conversation settings. Our work marks a step toward hearing assistants that adapt proactively to conversational dynamics and engagement.
LlamaPIE: Proactive In-Ear Conversation Assistants
Tuochao Chen
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Nicholas Scott Batchelder
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Alisa Liu
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Noah A. Smith
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Shyamnath Gollakota
Findings of the Association for Computational Linguistics: ACL 2025
We introduce LlamaPIE, the first real-time proactive assistant designed to enhance human conversations through discreet, concise guidance delivered via hearable devices. Unlike traditional language models that require explicit user invocation, this assistant operates in the background, anticipating user needs without interrupting conversations. We address several challenges, including determining when to respond, crafting concise responses that enhance conversations, leveraging knowledge of the user for context-aware assistance, and real-time, on-device processing. To achieve this, we construct a semi-synthetic dialogue dataset and propose a two-model pipeline: a small model that decides when to respond and a larger model that generates the response. We evaluate our approach on real-world datasets, demonstrating its effectiveness in providing helpful, unobtrusive assistance. User studies with our assistant, implemented on Apple Silicon M2 hardware, show a strong preference for the proactive assistant over both a baseline with no assistance and a reactive AI assistant, highlighting the potential of LlamaPIE to enhance live conversations.
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- Shyamnath Gollakota 2
- Nicholas Scott Batchelder 1
- Guilin Hu 1
- Malek Itani 1
- Alisa Liu 1
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