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Zero-Shot Activity Recognition with Verb Attribute Induction

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arxiv 1707.09468 v2 pith:VEM2PDUM submitted 2017-07-29 cs.CL cs.CV

Zero-Shot Activity Recognition with Verb Attribute Induction

classification cs.CL cs.CV
keywords attributesactionzero-shotactivitypreviouslyrecognitionrepresentationsunseen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we investigate large-scale zero-shot activity recognition by modeling the visual and linguistic attributes of action verbs. For example, the verb "salute" has several properties, such as being a light movement, a social act, and short in duration. We use these attributes as the internal mapping between visual and textual representations to reason about a previously unseen action. In contrast to much prior work that assumes access to gold standard attributes for zero-shot classes and focuses primarily on object attributes, our model uniquely learns to infer action attributes from dictionary definitions and distributed word representations. Experimental results confirm that action attributes inferred from language can provide a predictive signal for zero-shot prediction of previously unseen activities.

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