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Yu et al., 2022 - Google Patents

Abnormal event detection using adversarial predictive coding for motion and appearance

Yu et al., 2022

Document ID
7122021658726674693
Author
Yu J
Kim J
Gwak J
Lee B
Jeon M
Publication year
Publication venue
Information Sciences

External Links

Snippet

In this paper, we propose adversarial predictive coding (APC), a novel method for detecting abnormal events. Abnormal event detection (AED) is to identify unobserved events from a given training dataset consisting of normal events, and it is considered as one of the most …
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Classifications

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