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dc.contributor.advisorOneto, Luca <1986>
dc.contributor.authorTewolde, Selam Gebrehiwot <1998>
dc.contributor.otherMaurizio Mongelli
dc.date.accessioned2025-03-27T15:33:00Z
dc.date.available2025-03-27T15:33:00Z
dc.date.issued2025-03-24
dc.identifier.urihttps://unire.unige.it/handle/123456789/11645
dc.description.abstractDetecting anomalies and out-of-distribution (OoD) data in machine learning remains a critical challenge, particularly in real-world applications where anomalous data often lacks labels and can have severe consequences. This thesis develops an unsupervised framework to address this problem, providing a scalable solution for detecting anomalies in dynamic and complex domains like autonomous systems and healthcare. By perturbing image features, the model generates synthetic data that simulates realistic anomalies without relying on costly labeled data. This allows the system to identify deviations from the patterns seen in the in-distribution data. At the same time, histogram-based analysis monitors the effectiveness of the rules, enabling real-time detection of out-of-distribution (OoD) data. The findings demonstrate that the method is more effective at detecting unknown anomalies in dynamic and complex environments. This work contributes to the advancement of anomaly detection techniques and presents a practical solution for industries facing limited labeled data, with significant implications for improving the safety and reliability of machine learning systems in critical applications. Keywords: Out-of-distribution, OoD, Out of distribution detection, ODD, synthetic data, Data generation, rule based methodsit_IT
dc.description.abstractDetecting anomalies and out-of-distribution (OoD) data in machine learning remains a critical challenge, particularly in real-world applications where anomalous data often lacks labels and can have severe consequences. This thesis develops an unsupervised framework to address this problem, providing a scalable solution for detecting anomalies in dynamic and complex domains like autonomous systems and healthcare. By perturbing image features, the model generates synthetic data that simulates realistic anomalies without relying on costly labeled data. This allows the system to identify deviations from the patterns seen in the in-distribution data. At the same time, histogram-based analysis monitors the effectiveness of the rules, enabling real-time detection of out-of-distribution (OoD) data. The findings demonstrate that the method is more effective at detecting unknown anomalies in dynamic and complex environments. This work contributes to the advancement of anomaly detection techniques and presents a practical solution for industries facing limited labeled data, with significant implications for improving the safety and reliability of machine learning systems in critical applications. Keywords: Out-of-distribution, OoD, Out of distribution detection, ODD, synthetic data, Data generation, rule based methodsen_UK
dc.language.isoen
dc.language.isoen
dc.rightsinfo:eu-repo/semantics/openAccess
dc.titleUnsupervised Rule-Based-out-of-distribution Detectionit_IT
dc.title.alternativeUnsupervised Rule-Based-out-of-distribution Detectionen_UK
dc.typeinfo:eu-repo/semantics/masterThesis
dc.subject.miurING-INF/05 - SISTEMI DI ELABORAZIONE DELLE INFORMAZIONI
dc.subject.miurING-INF/05 - SISTEMI DI ELABORAZIONE DELLE INFORMAZIONI
dc.publisher.nameUniversità degli studi di Genova
dc.date.academicyear2023/2024
dc.description.corsolaurea11160 - COMPUTER ENGINEERING
dc.description.area9 - INGEGNERIA
dc.description.department100023 - DIPARTIMENTO DI INFORMATICA, BIOINGEGNERIA, ROBOTICA E INGEGNERIA DEI SISTEMI


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