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Grounding Partially-Defined Events in Multimodal Data

Conference on Empirical Methods in Natural Language Processing (EMNLP), 2024
7 October 2024
Kate Sanders
Reno Kriz
David Etter
Hannah Recknor
Alexander Martin
Cameron Carpenter
Jingyang Lin
Benjamin Van Durme
ArXiv (abs)PDFHTML
Main:8 Pages
13 Figures
Bibliography:4 Pages
10 Tables
Appendix:11 Pages
Abstract

How are we able to learn about complex current events just from short snippets of video? While natural language enables straightforward ways to represent under-specified, partially observable events, visual data does not facilitate analogous methods and, consequently, introduces unique challenges in event understanding. With the growing prevalence of vision-capable AI agents, these systems must be able to model events from collections of unstructured video data. To tackle robust event modeling in multimodal settings, we introduce a multimodal formulation for partially-defined events and cast the extraction of these events as a three-stage span retrieval task. We propose a corresponding benchmark for this task, MultiVENT-G, that consists of 14.5 hours of densely annotated current event videos and 1,168 text documents, containing 22.8K labeled event-centric entities. We propose a collection of LLM-driven approaches to the task of multimodal event analysis, and evaluate them on MultiVENT-G. Results illustrate the challenges that abstract event understanding poses and demonstrates promise in event-centric video-language systems.

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