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Wu et al., 2022 - Google Patents

An explainable and efficient deep learning framework for video anomaly detection

Wu et al., 2022

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Document ID
7788508601142975643
Author
Wu C
Shao S
Tunc C
Satam P
Hariri S
Publication year
Publication venue
Cluster computing

External Links

Snippet

Deep learning-based video anomaly detection methods have drawn significant attention in the past few years due to their superior performance. However, almost all the leading methods for video anomaly detection rely on large-scale training datasets with long training …
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Classifications

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