UIUC Office of Technology Management
Published on UIUC Office of Technology Management (https://origin.otm.illinois.edu)

Home > D-AnoGAN: Unsupervised Anomaly Detection in Images using Generative Adversarial Networks

D-AnoGANĀ for Anomaly Detection

D-AnoGAN: Unsupervised Anomaly Detection in Images using Generative Adversarial Networks [1]

Researchers have created a Generative Adversarial Network (GAN) for anomaly detection in manufacturing. By deploying a method that clusters data and individually assesses manifolds for anomalies, this method significantly outperforms other GANs in testing. Within particular datasets, D-AnoGAN can be trained to detect industry-specific anomalies with a very low error rate.

Michael
Lembeck

Inventors:

The Office of Technology Management
319 Ceramics Building
105 South Goodwin Avenue
Urbana, IL 61801
Phone: 217.333.7862
Fax: 217.265.5530
Email: otm@illinois.edu

Source URL:https://origin.otm.illinois.edu/technologies/d-anogan-unsupervised-anomaly-detection-images-using-generative-adversarial-networks

Links
[1] https://origin.otm.illinois.edu/technologies/d-anogan-unsupervised-anomaly-detection-images-using-generative-adversarial-networks