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Main Author: Rajaa, Shangeth
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.08216
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author Rajaa, Shangeth
author_facet Rajaa, Shangeth
contents Speech-to-speech models handle turn-taking naturally but offer limited support for tool-calling or complex reasoning, while production ASR-LLM-TTS voice pipelines offer these capabilities but rely on silence timeouts, which lead to unnatural turn-taking. We present DualTurn, which narrows this gap through generative pretraining on dual-channel conversational audio. The model generates both speakers' future audio autoregressively, implicitly learning conversational dynamics without any labels, and is then fine-tuned to predict interpretable turn-taking signals that map directly to agent actions. DualTurn monitors both channels continuously, anticipating turn boundaries and producing five agent actions. On standard benchmarks, DualTurn (0.5B) outperforms both VAP on agent action prediction (wF1 0.633 vs. 0.389) and a 3.1B audio-text model on word-level turn prediction (AUC 0.930 vs. 0.880), while anticipating turn boundaries earlier with fewer interruptions.
format Preprint
id arxiv_https___arxiv_org_abs_2603_08216
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DualTurn: Learning Turn-Taking from Dual-Channel Generative Speech Pretraining
Rajaa, Shangeth
Audio and Speech Processing
Computation and Language
Sound
Speech-to-speech models handle turn-taking naturally but offer limited support for tool-calling or complex reasoning, while production ASR-LLM-TTS voice pipelines offer these capabilities but rely on silence timeouts, which lead to unnatural turn-taking. We present DualTurn, which narrows this gap through generative pretraining on dual-channel conversational audio. The model generates both speakers' future audio autoregressively, implicitly learning conversational dynamics without any labels, and is then fine-tuned to predict interpretable turn-taking signals that map directly to agent actions. DualTurn monitors both channels continuously, anticipating turn boundaries and producing five agent actions. On standard benchmarks, DualTurn (0.5B) outperforms both VAP on agent action prediction (wF1 0.633 vs. 0.389) and a 3.1B audio-text model on word-level turn prediction (AUC 0.930 vs. 0.880), while anticipating turn boundaries earlier with fewer interruptions.
title DualTurn: Learning Turn-Taking from Dual-Channel Generative Speech Pretraining
topic Audio and Speech Processing
Computation and Language
Sound
url https://arxiv.org/abs/2603.08216