Multiresolution Knowledge Distillation for Anomaly Detection
- URL: http://arxiv.org/abs/2011.11108v1
- Date: Sun, 22 Nov 2020 21:16:35 GMT
- Title: Multiresolution Knowledge Distillation for Anomaly Detection
- Authors: Mohammadreza Salehi, Niousha Sadjadi, Soroosh Baselizadeh, Mohammad
Hossein Rohban, Hamid R. Rabiee
- Abstract summary: Unsupervised representation learning has proved to be a critical component of anomaly detection/localization in images.
The sample size is not often large enough to learn a rich generalizable representation through conventional techniques.
Here, we propose to use the "distillation" of features at various layers of an expert network, pre-trained on ImageNet, into a simpler cloner network to tackle both issues.
- Score: 10.799350080453982
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unsupervised representation learning has proved to be a critical component of
anomaly detection/localization in images. The challenges to learn such a
representation are two-fold. Firstly, the sample size is not often large enough
to learn a rich generalizable representation through conventional techniques.
Secondly, while only normal samples are available at training, the learned
features should be discriminative of normal and anomalous samples. Here, we
propose to use the "distillation" of features at various layers of an expert
network, pre-trained on ImageNet, into a simpler cloner network to tackle both
issues. We detect and localize anomalies using the discrepancy between the
expert and cloner networks' intermediate activation values given the input
data. We show that considering multiple intermediate hints in distillation
leads to better exploiting the expert's knowledge and more distinctive
discrepancy compared to solely utilizing the last layer activation values.
Notably, previous methods either fail in precise anomaly localization or need
expensive region-based training. In contrast, with no need for any special or
intensive training procedure, we incorporate interpretability algorithms in our
novel framework for the localization of anomalous regions. Despite the striking
contrast between some test datasets and ImageNet, we achieve competitive or
significantly superior results compared to the SOTA methods on MNIST, F-MNIST,
CIFAR-10, MVTecAD, Retinal-OCT, and two Medical datasets on both anomaly
detection and localization.
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