Quantum Patch-Based Autoencoder for Anomaly Segmentation
Quantum Machine Learning investigates the pos-sibility of quantum computers enhancing Machine Learning algorithms. Anomaly segmentation is a fundamental task in various domains to identify irregularities at sample level and can be addressed with both supervised and unsupervised methods. Autoencoders...
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| Vydané v: | 2024 IEEE International Conference on Quantum Computing and Engineering (QCE) Ročník 1; s. 259 - 267 |
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IEEE
15.09.2024
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| Abstract | Quantum Machine Learning investigates the pos-sibility of quantum computers enhancing Machine Learning algorithms. Anomaly segmentation is a fundamental task in various domains to identify irregularities at sample level and can be addressed with both supervised and unsupervised methods. Autoencoders are commonly used in unsupervised tasks, where models are trained to reconstruct normal instances efficiently, al-lowing anomaly identification through high reconstruction errors. While quantum autoencoders have been proposed in the literature, their application to anomaly segmentation tasks remains unexplored. In this paper, we introduce a patch-based quantum autoencoder (QPB-AE) for image anomaly segmentation, with a number of parameters scaling logarithmically with patch size. QPB-AE reconstructs the quantum state of the embedded input patches, computing an anomaly map directly from measurement through a SWAP test without reconstructing the input image. We evaluate its performance across multiple datasets and parameter configurations and compare it against a classical counterpart. |
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| AbstractList | Quantum Machine Learning investigates the pos-sibility of quantum computers enhancing Machine Learning algorithms. Anomaly segmentation is a fundamental task in various domains to identify irregularities at sample level and can be addressed with both supervised and unsupervised methods. Autoencoders are commonly used in unsupervised tasks, where models are trained to reconstruct normal instances efficiently, al-lowing anomaly identification through high reconstruction errors. While quantum autoencoders have been proposed in the literature, their application to anomaly segmentation tasks remains unexplored. In this paper, we introduce a patch-based quantum autoencoder (QPB-AE) for image anomaly segmentation, with a number of parameters scaling logarithmically with patch size. QPB-AE reconstructs the quantum state of the embedded input patches, computing an anomaly map directly from measurement through a SWAP test without reconstructing the input image. We evaluate its performance across multiple datasets and parameter configurations and compare it against a classical counterpart. |
| Author | Poggiali, Alessandro Madeira, Maria Francisca Lorenz, Jeanette Miriam |
| Author_xml | – sequence: 1 givenname: Maria Francisca surname: Madeira fullname: Madeira, Maria Francisca email: francisca.madeira@lmu.de organization: Ludwig-Maximilians-Universität München, Fraunhofer IKS,Munich,Germany – sequence: 2 givenname: Alessandro surname: Poggiali fullname: Poggiali, Alessandro email: alessandro.poggiali@phd.unipi.it organization: University of Pisa, Fraunhofer IKS,Munich,Germany – sequence: 3 givenname: Jeanette Miriam surname: Lorenz fullname: Lorenz, Jeanette Miriam email: jeanette.miriam.lorenz@iks.fraunhofer.de organization: Ludwig-Maximilians-Universität München, Fraunhofer IKS,Munich,Germany |
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| Snippet | Quantum Machine Learning investigates the pos-sibility of quantum computers enhancing Machine Learning algorithms. Anomaly segmentation is a fundamental task... |
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| StartPage | 259 |
| SubjectTerms | Anomaly Segmen-tation Autoencoders Computational modeling Data models Image reconstruction Image segmentation Location awareness Noise Quantum Autoencoder Quantum computing Quantum Machine Learning Scalability Training |
| Title | Quantum Patch-Based Autoencoder for Anomaly Segmentation |
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