SLA^2P: Self-supervised Anomaly Detection with Adversarial Perturbation

11/25/2021
by   Yizhou Wang, et al.
0

Anomaly detection is a fundamental yet challenging problem in machine learning due to the lack of label information. In this work, we propose a novel and powerful framework, dubbed as SLA^2P, for unsupervised anomaly detection. After extracting representative embeddings from raw data, we apply random projections to the features and regard features transformed by different projections as belonging to distinct pseudo classes. We then train a classifier network on these transformed features to perform self-supervised learning. Next we add adversarial perturbation to the transformed features to decrease their softmax scores of the predicted labels and design anomaly scores based on the predictive uncertainties of the classifier on these perturbed features. Our motivation is that because of the relatively small number and the decentralized modes of anomalies, 1) the pseudo label classifier's training concentrates more on learning the semantic information of normal data rather than anomalous data; 2) the transformed features of the normal data are more robust to the perturbations than those of the anomalies. Consequently, the perturbed transformed features of anomalies fail to be classified well and accordingly have lower anomaly scores than those of the normal samples. Extensive experiments on image, text and inherently tabular benchmark datasets back up our findings and indicate that SLA^2P achieves state-of-the-art results on unsupervised anomaly detection tasks consistently.

READ FULL TEXT
research
09/26/2022

Self-Supervised Guided Segmentation Framework for Unsupervised Anomaly Detection

Unsupervised anomaly detection is a challenging task in industrial appli...
research
05/13/2022

Self-Supervised Masking for Unsupervised Anomaly Detection and Localization

Recently, anomaly detection and localization in multimedia data have rec...
research
04/30/2023

SLSG: Industrial Image Anomaly Detection by Learning Better Feature Embeddings and One-Class Classification

Industrial image anomaly detection under the setting of one-class classi...
research
06/06/2022

Perturbation Learning Based Anomaly Detection

This paper presents a simple yet effective method for anomaly detection....
research
08/28/2023

Self-Supervision for Tackling Unsupervised Anomaly Detection: Pitfalls and Opportunities

Self-supervised learning (SSL) is a growing torrent that has recently tr...
research
12/21/2021

Anomaly Clustering: Grouping Images into Coherent Clusters of Anomaly Types

We introduce anomaly clustering, whose goal is to group data into semant...
research
07/12/2020

Interpretable, Multidimensional, Multimodal Anomaly Detection with Negative Sampling for Detection of Device Failure

Complex devices are connected daily and eagerly generate vast streams of...

Please sign up or login with your details

Forgot password? Click here to reset