Please use this identifier to cite or link to this item: http://hdl.handle.net/1893/35988
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dc.contributor.advisorSwingler, Kevin-
dc.contributor.authorJohnston, Penny-
dc.date.accessioned2024-05-06T10:37:52Z-
dc.date.available2024-05-06T10:37:52Z-
dc.date.issued2023-09-30-
dc.identifier.citationP. Johnston, K. Nogueira and K. Swingler, "GMM-IL: Image Classification Using Incrementally Learnt, Independent Probabilistic Models for Small Sample Sizes," in IEEE Access, vol. 11, pp. 25492-25501, 2023, https://doi.org/10.1109/ACCESS.2023.3255795en_GB
dc.identifier.citationP. Johnston, K. Nogueira and K. Swingler, "NS-IL: Neuro-Symbolic Visual Question Answering Using Incrementally Learnt, Independent Probabilistic Models for Small Sample Sizes," in IEEE Access, vol. 11, pp. 141406-141420, 2023, https://doi.org/10.1109/ACCESS.2023.3341007en_GB
dc.identifier.urihttp://hdl.handle.net/1893/35988-
dc.description.abstractThis research is motivated by the challenge of providing accurate and contextually relevant answers to natural language questions about visual scenes, particularly in support of individuals with visual impairments. Neural-Symbolic computing aims to unlock the potential of both the robust learning capabilities found in neural networks and the reasoning and interpretability of symbolic representation through their integration. This thesis introduces a Neuro-Symbolic Incremental Learner designed specifically for the Visual Question Answering Task. The system incrementally learns visual classes and symbolic facts to answer natural language questions about visual scenes. Using Deep Learning, a feature space is created from which visual classes are learnt as independent probability distributions. This allows for the easy addition of new classes even with limited data, mitigating the catastrophic forgetting typical of traditional neural networks. The incorporation of classification by category allows visual classes to not be limited to just objects but can also include other categories such as attributes. A knowledge graph stores facts about regions of interest, detailing; objects, attributes, actions, locations, and inter-relations, facilitating the incremental addition of knowledge. This allows facts to be stored explicitly and added incrementally. Leveraging a large language model, the system translates natural language questions into knowledge graph queries, ensuring a fluid visual question-answering experience.en_GB
dc.language.isoenen_GB
dc.publisherUniversity of Stirlingen_GB
dc.subjectNeuro-Symbolicen_GB
dc.subjectIncremental Learningen_GB
dc.subjectDeep Learningen_GB
dc.subjectAutoencodersen_GB
dc.subjectGaussian Mixture Modelsen_GB
dc.subjectDigital Assistanten_GB
dc.subject.lcshDeep learning (Machine learning)en_GB
dc.subject.lcshMachine learningen_GB
dc.subject.lcshArtificial intelligenceen_GB
dc.subject.lcshPredictive controlen_GB
dc.subject.lcshVision disordersen_GB
dc.subject.lcshOptical materialsen_GB
dc.titleA Neuro -Symbolic Incremental Learner Model for the Visual Question Answering Tasken_GB
dc.typeThesis or Dissertationen_GB
dc.type.qualificationlevelDoctoralen_GB
dc.type.qualificationnameDoctor of Philosophyen_GB
dc.author.emailPS-Johnston@hotmail.comen_GB
Appears in Collections:Computing Science and Mathematics eTheses

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