Anomaly Detection based on Zero-Shot Outlier Synthesis and Hierarchical
Feature Distillation
- URL: http://arxiv.org/abs/2010.05119v1
- Date: Sat, 10 Oct 2020 23:34:02 GMT
- Title: Anomaly Detection based on Zero-Shot Outlier Synthesis and Hierarchical
Feature Distillation
- Authors: Ad\'in Ram\'irez Rivera, Adil Khan, Imad E. I. Bekkouch, Taimoor S.
Sheikh
- Abstract summary: Synthetically generated anomalies are a solution to such ill or not fully defined data.
We propose a two-level hierarchical latent space representation that distills inliers' feature-descriptors.
We select those that lie on the outskirts of the training data as synthetic-outlier generators.
- Score: 2.580765958706854
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anomaly detection suffers from unbalanced data since anomalies are quite
rare. Synthetically generated anomalies are a solution to such ill or not fully
defined data. However, synthesis requires an expressive representation to
guarantee the quality of the generated data. In this paper, we propose a
two-level hierarchical latent space representation that distills inliers'
feature-descriptors (through autoencoders) into more robust representations
based on a variational family of distributions (through a variational
autoencoder) for zero-shot anomaly generation. From the learned latent
distributions, we select those that lie on the outskirts of the training data
as synthetic-outlier generators. And, we synthesize from them, i.e., generate
negative samples without seen them before, to train binary classifiers. We
found that the use of the proposed hierarchical structure for feature
distillation and fusion creates robust and general representations that allow
us to synthesize pseudo outlier samples. And in turn, train robust binary
classifiers for true outlier detection (without the need for actual outliers
during training). We demonstrate the performance of our proposal on several
benchmarks for anomaly detection.
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