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Connecting Vision and Language with Video Localized Narratives

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arxiv 2302.11217 v2 pith:AK4QK5O5 submitted 2023-02-22 cs.CV

Connecting Vision and Language with Video Localized Narratives

classification cs.CV
keywords videolocalizednarrativesannotationsannotatorsconnectinggroundinglanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose Video Localized Narratives, a new form of multimodal video annotations connecting vision and language. In the original Localized Narratives, annotators speak and move their mouse simultaneously on an image, thus grounding each word with a mouse trace segment. However, this is challenging on a video. Our new protocol empowers annotators to tell the story of a video with Localized Narratives, capturing even complex events involving multiple actors interacting with each other and with several passive objects. We annotated 20k videos of the OVIS, UVO, and Oops datasets, totalling 1.7M words. Based on this data, we also construct new benchmarks for the video narrative grounding and video question answering tasks, and provide reference results from strong baseline models. Our annotations are available at https://google.github.io/video-localized-narratives/.

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