Jack Barker jack.w.barker@durham.ac.uk
PGR Student Doctor of Philosophy
Robust Semi-Supervised Anomaly Detection via Adversarially Learned Continuous Noise Corruption
Barker, J.W.; Bhowmik, N.; Gaus, Y.F.A.; Breckon, T.P.
Authors
Dr Neelanjan Bhowmik neelanjan.bhowmik@durham.ac.uk
Post Doctoral Research Associate
Y.F.A. Gaus
Professor Toby Breckon toby.breckon@durham.ac.uk
Professor
Abstract
Anomaly detection is the task of recognising novel samples which deviate significantly from pre-established normality. Abnormal classes are not present during training meaning that models must learn effective representations solely across normal class data samples. Deep Autoencoders (AE) have been widely used for anomaly detection tasks, but suffer from overfitting to a null identity function. To address this problem, we implement a training scheme applied to a Denoising Autoencoder (DAE) which introduces an efficient method of producing Adversarially Learned Continuous Noise (ALCN) to maximally globally corrupt the input prior to denoising. Prior methods have applied similar approaches of adversarial training to increase the robustness of DAE, however they exhibit limitations such as slow inference speed reducing their real-world applicability or producing generalised obfuscation which is more trivial to denoise. We show through rigorous evaluation that our ALCN method of regularisation during training improves AUC performance during inference while remaining efficient over both classical, leave-one-out novelty detection tasks with the variations-: 9 (normal) vs. 1 (abnormal) & 1 (normal) vs. 9 (abnormal); MNIST - AUCavg: 0.890 & 0.989, CIFAR-10 - AUCavg: 0.670 & 0.742, in addition to challenging real-world anomaly detection tasks: industrial inspection (MVTEC-AD - AUCavg: 0.780) and plant disease detection (Plant Village - AUC: 0.770) when compared to prior approaches.
Citation
Barker, J., Bhowmik, N., Gaus, Y., & Breckon, T. (2023). Robust Semi-Supervised Anomaly Detection via Adversarially Learned Continuous Noise Corruption. . https://doi.org/10.5220/0011684700003417
Presentation Conference Type | Conference Paper (Published) |
---|---|
Conference Name | VISAPP 2023: 18th International Conference on Computer Vision Theory and Applications |
Start Date | Feb 19, 2023 |
End Date | Feb 21, 2023 |
Acceptance Date | Dec 14, 2022 |
Publication Date | 2023 |
Deposit Date | Jan 18, 2023 |
Publicly Available Date | Jan 18, 2023 |
Pages | 615-625 |
Series ISSN | 2184-4321 |
DOI | https://doi.org/10.5220/0011684700003417 |
Public URL | https://durham-repository.worktribe.com/output/1134201 |
Files
Accepted Conference Proceeding
(3.5 Mb)
PDF
You might also like
Seeing Through the Data: A Statistical Evaluation of Prohibited Item Detection Benchmark Datasets for X-ray Security Screening
(2023)
Presentation / Conference Contribution
Region-based Appearance and Flow Characteristics for Anomaly Detection in Infrared Surveillance Imagery
(2023)
Presentation / Conference Contribution
Joint Sub-component Level Segmentation and Classification for Anomaly Detection within Dual-Energy X-Ray Security Imagery
(2022)
Presentation / Conference Contribution
Cross-modal Image Synthesis in Dual-Energy X-Ray Security Imagery
(2022)
Presentation / Conference Contribution
Lost in Compression: the Impact of Lossy Image Compression on Variable Size Object Detection within Infrared Imagery
(2022)
Presentation / Conference Contribution
Downloadable Citations
About Durham Research Online (DRO)
Administrator e-mail: dro.admin@durham.ac.uk
This application uses the following open-source libraries:
SheetJS Community Edition
Apache License Version 2.0 (http://www.apache.org/licenses/)
PDF.js
Apache License Version 2.0 (http://www.apache.org/licenses/)
Font Awesome
SIL OFL 1.1 (http://scripts.sil.org/OFL)
MIT License (http://opensource.org/licenses/mit-license.html)
CC BY 3.0 ( http://creativecommons.org/licenses/by/3.0/)
Powered by Worktribe © 2024
Advanced Search