SDGAN improves temporal video grounding by jointly using static and dynamic graphs with query-clip contrastive learning and easy-to-hard progressive training.
DORi: Discovering Object Relationships for moment lo- calization of a natural language query in a video,
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Static and Dynamic Graph Alignment Network for Temporal Video Grounding
SDGAN improves temporal video grounding by jointly using static and dynamic graphs with query-clip contrastive learning and easy-to-hard progressive training.