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arxiv 1905.03578 v1 pith:YNLLH4R6 submitted 2019-05-09 cs.CV cs.AIcs.ITcs.ROmath.IT

Learning Representations for Predicting Future Activities

classification cs.CV cs.AIcs.ITcs.ROmath.IT
keywords futureactivitiesdynamicsenvironmentlearningabstractaccountaddress
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Foreseeing the future is one of the key factors of intelligence. It involves understanding of the past and current environment as well as decent experience of its possible dynamics. In this work, we address future prediction at the abstract level of activities. We propose a network module for learning embeddings of the environment's dynamics in a self-supervised way. To take the ambiguities and high variances in the future activities into account, we use a multi-hypotheses scheme that can represent multiple futures. We demonstrate the approach by classifying future activities on the Epic-Kitchens and Breakfast datasets. Moreover, we generate captions that describe the future activities

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