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Transferring Knowledge From Text to Video: Zero-Shot Anticipation for Procedural Actions | IEEE Journals & Magazine | IEEE Xplore

Transferring Knowledge From Text to Video: Zero-Shot Anticipation for Procedural Actions


Abstract:

Can we teach a robot to recognize and make predictions for activities that it has never seen before? We tackle this problem by learning models for video from text. This p...Show More

Abstract:

Can we teach a robot to recognize and make predictions for activities that it has never seen before? We tackle this problem by learning models for video from text. This paper presents a hierarchical model that generalizes instructional knowledge from large-scale text corpora and transfers the knowledge to video. Given a portion of an instructional video, our model recognizes and predicts coherent and plausible actions multiple steps into the future, all in rich natural language. To demonstrate the capabilities of our model, we introduce the Tasty Videos Dataset V2, a collection of 4022 recipes for zero-shot learning, recognition and anticipation. Extensive experiments with various evaluation metrics demonstrate the potential of our method for generalization, given limited video data for training models.
Page(s): 7836 - 7852
Date of Publication: 01 November 2022

ISSN Information:

PubMed ID: 36318562

Funding Agency:


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