A Transfer Learning Framework for Anomaly Detection Using Model of
Normality
- URL: http://arxiv.org/abs/2011.06210v1
- Date: Thu, 12 Nov 2020 05:26:32 GMT
- Title: A Transfer Learning Framework for Anomaly Detection Using Model of
Normality
- Authors: Sulaiman Aburakhia, Tareq Tayeh, Ryan Myers, Abdallah Shami
- Abstract summary: Convolutional Neural Network (CNN) techniques have proven to be very useful in image-based anomaly detection applications.
We introduce a transfer learning framework for anomaly detection based on similarity measure with a Model of Normality (MoN)
We show that with the proposed threshold settings, a significant performance improvement can be achieved.
- Score: 2.9685635948299995
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Convolutional Neural Network (CNN) techniques have proven to be very useful
in image-based anomaly detection applications. CNN can be used as deep features
extractor where other anomaly detection techniques are applied on these
features. For this scenario, using transfer learning is common since pretrained
models provide deep feature representations that are useful for anomaly
detection tasks. Consequentially, anomaly can be detected by applying similarly
measure between extracted features and a defined model of normality. A key
factor in such approaches is the decision threshold used for detecting anomaly.
While most of the proposed methods focus on the approach itself, slight
attention has been paid to address decision threshold settings. In this paper,
we tackle this problem and propose a welldefined method to set the
working-point decision threshold that improves detection accuracy. We introduce
a transfer learning framework for anomaly detection based on similarity measure
with a Model of Normality (MoN) and show that with the proposed threshold
settings, a significant performance improvement can be achieved. Moreover, the
framework has low complexity with relaxed computational requirements.
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