Changsoo Jung


2025

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Multimodal Common Ground Annotation for Partial Information Collaborative Problem Solving
Yifan Zhu | Changsoo Jung | Kenneth Lai | Videep Venkatesha | Mariah Bradford | Jack Fitzgerald | Huma Jamil | Carine Graff | Sai Kiran Ganesh Kumar | Bruce Draper | Nathaniel Blanchard | James Pustejovsky | Nikhil Krishnaswamy
Proceedings of the 21st Joint ACL - ISO Workshop on Interoperable Semantic Annotation (ISA-21)

This project note describes challenges and procedures undertaken in annotating an audiovisual dataset capturing a multimodal situated collaborative construction task. In the task, all participants begin with different partial information, and must collaborate using speech, gesture, and action to arrive a solution that satisfies all individual pieces of private information. This rich data poses a number of annotation challenges, from small objects in a close space, to the implicit and multimodal fashion in which participants express agreement, disagreement, and beliefs. We discuss the data collection procedure, annotation schemas and tools, and future use cases.

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TRACE: Real-Time Multimodal Common Ground Tracking in Situated Collaborative Dialogues
Hannah VanderHoeven | Brady Bhalla | Ibrahim Khebour | Austin C. Youngren | Videep Venkatesha | Mariah Bradford | Jack Fitzgerald | Carlos Mabrey | Jingxuan Tu | Yifan Zhu | Kenneth Lai | Changsoo Jung | James Pustejovsky | Nikhil Krishnaswamy
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (System Demonstrations)

We present TRACE, a novel system for live *common ground* tracking in situated collaborative tasks. With a focus on fast, real-time performance, TRACE tracks the speech, actions, gestures, and visual attention of participants, uses these multimodal inputs to determine the set of task-relevant propositions that have been raised as the dialogue progresses, and tracks the group’s epistemic position and beliefs toward them as the task unfolds. Amid increased interest in AI systems that can mediate collaborations, TRACE represents an important step forward for agents that can engage with multiparty, multimodal discourse.