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📄 Abstract
Abstract: Event cameras capture changes in brightness with microsecond precision and
remain reliable under motion blur and challenging illumination, offering clear
advantages for modeling highly dynamic scenes. Yet, their integration with
natural language understanding has received little attention, leaving a gap in
multimodal perception. To address this, we introduce Talk2Event, the first
large-scale benchmark for language-driven object grounding using event data.
Built on real-world driving scenarios, Talk2Event comprises 5,567 scenes,
13,458 annotated objects, and more than 30,000 carefully validated referring
expressions. Each expression is enriched with four structured attributes --
appearance, status, relation to the viewer, and relation to surrounding objects
-- that explicitly capture spatial, temporal, and relational cues. This
attribute-centric design supports interpretable and compositional grounding,
enabling analysis that moves beyond simple object recognition to contextual
reasoning in dynamic environments. We envision Talk2Event as a foundation for
advancing multimodal and temporally-aware perception, with applications
spanning robotics, human-AI interaction, and so on.