Retrieval-Augmented Egocentric Video Captioning
CoRR(2024)
摘要
Understanding human actions from videos of first-person view poses
significant challenges. Most prior approaches explore representation learning
on egocentric videos only, while overlooking the potential benefit of
exploiting existing large-scale third-person videos. In this paper, (1) we
develop EgoInstructor, a retrieval-augmented multimodal captioning model that
automatically retrieves semantically relevant third-person instructional videos
to enhance the video captioning of egocentric videos. (2) For training the
cross-view retrieval module, we devise an automatic pipeline to discover
ego-exo video pairs from distinct large-scale egocentric and exocentric
datasets. (3) We train the cross-view retrieval module with a novel EgoExoNCE
loss that pulls egocentric and exocentric video features closer by aligning
them to shared text features that describe similar actions. (4) Through
extensive experiments, our cross-view retrieval module demonstrates superior
performance across seven benchmarks. Regarding egocentric video captioning,
EgoInstructor exhibits significant improvements by leveraging third-person
videos as references.
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