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Multimodal Activity Detection for Natural Interaction with Virtual Human

Kai Wang, Shiguo Lian, Haiyan Sang, Wen Liu, Zhaoxiang Liu, Fuyuan Shi, Hui Deng, Zeming Sun, Zezhou Chen

Year
2023
Citations
4

Abstract

Natural face-to-face human-robot conversation is one of the most important features for virtual human in virtual reality and metaverse. However, the unintended wake-up of robot is often activated with only Voice Activity Detection (VAD). To address this issue, we propose a Multimodal Activity Detection (MAD) scheme, which considers not only voice but also gaze, lip-movement and talking content to decide whether the person is activating the robot. A dataset for large screen-based virtual human conversation is collected from various challenging cases. The experimental results show that the proposed MAD greatly outperforms VAD-only method.

Keywords

ConversationComputer scienceGazeHuman–computer interactionHuman–robot interactionVirtual actorRobotMetaverseVirtual realityScheme (mathematics)

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