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dc.contributor.advisorHochreiter, Sepp
dc.contributor.authorHeindl, Dominik
dc.date.accessioned2024-03-12T08:13:25Z
dc.date.available2024-03-12T08:13:25Z
dc.date.issued2020
dc.date.submitted2020-10-26
dc.identifier.urihttps://dspace.jcu.cz/handle/20.500.14390/42807
dc.description.abstractModern digital images, especially in the field of medicine, have extremely high resolutions. Current state-of-the-art image recognition techniques, like Convolutional Neural Networks, cannot handle such high dimensional inputs. In this thesis I compared the standard approach ofclassifying images by downscaling them with an attention-based Multiple Instance Learning approach where the original image is split up into several smaller patches and low dimensional embeddings are calculated for each patch by a Convolutional Neural Network. All low dimensional embeddings are then again processed in a MIL fashion, where attention-pooling is used to determine the importance of each patch. The data set for this thesis consisted of ultra high resolution histological slides of human skin which were classified to contain Basal Cell Carcinoma or not.cze
dc.format39
dc.format39
dc.language.isoeng
dc.publisherJihočeská univerzitacze
dc.rightsBez omezení
dc.subjectBCCcze
dc.subjectCNNcze
dc.subjectImage Recognitioncze
dc.subjectAttentioncze
dc.subjectBCCeng
dc.subjectCNNeng
dc.subjectImage Recognitioneng
dc.subjectAttentioneng
dc.titleAttention Based High Resolution Image Classificationcze
dc.title.alternativeAttention Based High Resolution Image Classificationeng
dc.typebakalářská prácecze
dc.identifier.stag63032
dc.description.abstract-translatedModern digital images, especially in the field of medicine, have extremely high resolutions. Current state-of-the-art image recognition techniques, like Convolutional Neural Networks, cannot handle such high dimensional inputs. In this thesis I compared the standard approach ofclassifying images by downscaling them with an attention-based Multiple Instance Learning approach where the original image is split up into several smaller patches and low dimensional embeddings are calculated for each patch by a Convolutional Neural Network. All low dimensional embeddings are then again processed in a MIL fashion, where attention-pooling is used to determine the importance of each patch. The data set for this thesis consisted of ultra high resolution histological slides of human skin which were classified to contain Basal Cell Carcinoma or not.eng
dc.date.accepted2020-11-24
dc.description.departmentPřírodovědecká fakultacze
dc.thesis.degree-disciplineBioinformaticscze
dc.thesis.degree-grantorJihočeská univerzita. Přírodovědecká fakultacze
dc.thesis.degree-nameBc.
dc.thesis.degree-programApplied Informaticscze
dc.description.gradeDokončená práce s úspěšnou obhajoboucze
dc.contributor.refereeRoland, Theresa


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