RandomSEMO: Normality Learning Of Moving Objects For Video Anomaly
Detection
- URL: http://arxiv.org/abs/2202.06256v1
- Date: Sun, 13 Feb 2022 08:39:49 GMT
- Title: RandomSEMO: Normality Learning Of Moving Objects For Video Anomaly
Detection
- Authors: Chaewon Park, Minhyeok Lee, MyeongAh Cho and Sangyoun Lee
- Abstract summary: We propose a superpixel-based video data transformation technique named Random Superpixel Erasing on Moving Objects (RandomSEMO) and Moving Object Loss (MOLoss)
RandomSEMO is applied to the moving object regions by randomly erasing their superpixels.
MOLoss urges the model to focus on learning normal objects captured within RandomSEMO by amplifying the loss on the pixels near the moving objects.
- Score: 6.895697402893975
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent anomaly detection algorithms have shown powerful performance by
adopting frame predicting autoencoders. However, these methods face two
challenging circumstances. First, they are likely to be trained to be
excessively powerful, generating even abnormal frames well, which leads to
failure in detecting anomalies. Second, they are distracted by the large number
of objects captured in both foreground and background. To solve these problems,
we propose a novel superpixel-based video data transformation technique named
Random Superpixel Erasing on Moving Objects (RandomSEMO) and Moving Object Loss
(MOLoss), built on top of a simple lightweight autoencoder. RandomSEMO is
applied to the moving object regions by randomly erasing their superpixels. It
enforces the network to pay attention to the foreground objects and learn the
normal features more effectively, rather than simply predicting the future
frame. Moreover, MOLoss urges the model to focus on learning normal objects
captured within RandomSEMO by amplifying the loss on the pixels near the moving
objects. The experimental results show that our model outperforms
state-of-the-arts on three benchmarks.
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