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arxiv 1912.06430 v4 pith:KHOMY6RM submitted 2019-12-13 cs.CV

End-to-End Learning of Visual Representations from Uncurated Instructional Videos

classification cs.CV
keywords representationsvideosactionlearningvideoapproachmanualnarrated
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Annotating videos is cumbersome, expensive and not scalable. Yet, many strong video models still rely on manually annotated data. With the recent introduction of the HowTo100M dataset, narrated videos now offer the possibility of learning video representations without manual supervision. In this work we propose a new learning approach, MIL-NCE, capable of addressing misalignments inherent to narrated videos. With this approach we are able to learn strong video representations from scratch, without the need for any manual annotation. We evaluate our representations on a wide range of four downstream tasks over eight datasets: action recognition (HMDB-51, UCF-101, Kinetics-700), text-to-video retrieval (YouCook2, MSR-VTT), action localization (YouTube-8M Segments, CrossTask) and action segmentation (COIN). Our method outperforms all published self-supervised approaches for these tasks as well as several fully supervised baselines.

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