Multimodal Voice Activity Projection for Turn-Taking in Social Robots with Voice-Activity-Related Pretrained Encoders
Abstract
Turn-taking prediction is a key requirement for social robots involved in human-human interaction, particularly in mediator settings, where the robot must anticipate conversational dynamics rather than merely react to pauses.
This work presents a Multimodal Voice Activity Projection (MM-VAP) framework that extends the original audio-only VAP formulation to synchronized audio-visual inputs while preserving its self-supervised future-projection objective.
The proposed approach builds on pretrained audio-visual backbones originally optimized for speech-related tasks and adapts them through Low-Rank Adaptation to the multimodal turn-taking problem.
After independent speaker encoding, an inter-speaker attention stage models the relational dynamics required to project future voice activity.
In addition, a semantic consistency loss is introduced to regularize the 256-state output space according to higher-level dialogue activity patterns.
Experiments on NoXi and NoXi+J showed improvements over the current baselines, particularly for some turn-taking events.
Additional evaluation on the Haru EDR corpus further supported the suitability of this direction for mediation-oriented human-robot interaction.
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