ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection

Quality inspection is an industrial field with a growing interest in anomaly detection research. An anomaly in an image can either be structural or logical. While structural anomalies lie on the image objects, challenging logical anomalies are hidden in the global relations between the image compone...

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Main Authors: Firas Zoghlami, Dena Bazazian, Giovanni L. Masala, Mario Gianni, Asiya Khan
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10758311/
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author Firas Zoghlami
Dena Bazazian
Giovanni L. Masala
Mario Gianni
Asiya Khan
author_facet Firas Zoghlami
Dena Bazazian
Giovanni L. Masala
Mario Gianni
Asiya Khan
author_sort Firas Zoghlami
collection DOAJ
description Quality inspection is an industrial field with a growing interest in anomaly detection research. An anomaly in an image can either be structural or logical. While structural anomalies lie on the image objects, challenging logical anomalies are hidden in the global relations between the image components. The proposed approach, Vision Graph based Logical Anomaly Detection (ViGLAD), uses the graph representation of an image for logical anomaly detection. Defining an image as a structure of nodes and edges leverages new possibilities for detecting hidden logical anomalies by introducing vision graph autoencoders. Our experiments on public datasets show that using vision graphs enhances the performance of state-of-the-art teacher-student-autoencoder neural networks in logical anomaly detection while achieving robust results in structural anomaly detection.
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institution Kabale University
issn 2169-3536
language English
publishDate 2024-01-01
publisher IEEE
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series IEEE Access
spelling doaj-art-a7a451110cf24d0b97f70a1c13ff3aa42024-11-26T00:01:16ZengIEEEIEEE Access2169-35362024-01-011217330417331510.1109/ACCESS.2024.350251410758311ViGLAD: Vision Graph Neural Networks for Logical Anomaly DetectionFiras Zoghlami0https://orcid.org/0000-0001-9609-2568Dena Bazazian1https://orcid.org/0000-0002-1229-4494Giovanni L. Masala2https://orcid.org/0000-0001-6734-9424Mario Gianni3https://orcid.org/0000-0001-5410-2377Asiya Khan4https://orcid.org/0000-0003-3620-3048School of Engineering, Computing and Mathematics, University of Plymouth, Plymouth, U.K.School of Engineering, Computing and Mathematics, University of Plymouth, Plymouth, U.K.School of Computing, University of Kent, Canterbury, U.K.Department of Computer Science, University of Liverpool, Liverpool, U.K.School of Engineering, Computing and Mathematics, University of Plymouth, Plymouth, U.K.Quality inspection is an industrial field with a growing interest in anomaly detection research. An anomaly in an image can either be structural or logical. While structural anomalies lie on the image objects, challenging logical anomalies are hidden in the global relations between the image components. The proposed approach, Vision Graph based Logical Anomaly Detection (ViGLAD), uses the graph representation of an image for logical anomaly detection. Defining an image as a structure of nodes and edges leverages new possibilities for detecting hidden logical anomalies by introducing vision graph autoencoders. Our experiments on public datasets show that using vision graphs enhances the performance of state-of-the-art teacher-student-autoencoder neural networks in logical anomaly detection while achieving robust results in structural anomaly detection.https://ieeexplore.ieee.org/document/10758311/Logical anomaly detectiongraph neural networksvision graphs
spellingShingle Firas Zoghlami
Dena Bazazian
Giovanni L. Masala
Mario Gianni
Asiya Khan
ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
IEEE Access
Logical anomaly detection
graph neural networks
vision graphs
title ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
title_full ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
title_fullStr ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
title_full_unstemmed ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
title_short ViGLAD: Vision Graph Neural Networks for Logical Anomaly Detection
title_sort viglad vision graph neural networks for logical anomaly detection
topic Logical anomaly detection
graph neural networks
vision graphs
url https://ieeexplore.ieee.org/document/10758311/
work_keys_str_mv AT firaszoghlami vigladvisiongraphneuralnetworksforlogicalanomalydetection
AT denabazazian vigladvisiongraphneuralnetworksforlogicalanomalydetection
AT giovannilmasala vigladvisiongraphneuralnetworksforlogicalanomalydetection
AT mariogianni vigladvisiongraphneuralnetworksforlogicalanomalydetection
AT asiyakhan vigladvisiongraphneuralnetworksforlogicalanomalydetection