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Addressee Detection Using Facial and Audio Features in Mixed Human–Human and Human–Robot Settings: A Deep Learning Framework

Fiseha B. Tesema, Jason Gu, Wei Song, Hong Wu, Shiqiang Zhu, Zheyuan Lin, Min Huang, Wen Wang, Rajesh Kumar

发表年份
2023
引用次数
3

摘要

Addressee detection (AD) enables robots to interact smoothly with a human by distinguishing whether it is being addressed. However, this has not been widely explored. The few studies that have explored this area focused on a human-to-human or human-to-robot conversation confined inside a meeting room using gaze and utterance. These works used statistical and rule-based approaches, which tend to depend on specific settings. Further, they did not fully leverage the available audio and visual information or the short-term and long-term segments, and they have not explored combining important conversation cues—the facial and audio features. In addition, no audiovisual spatiotemporal annotated dataset captured in mixed human-to-human and human-to-robot settings is available to support exploring the area using new approaches.

关键词

Computer scienceConversationHuman–robot interactionGazeRobotArtificial intelligenceLeverage (statistics)UtteranceHuman–computer interactionFacial expression

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