Towards Efficient Convolutional Neural Architecture Design

Bitte benutzen Sie diese Kennung, um auf die Ressource zu verweisen:
https://doi.org/10.48693/113
Open Access logo originally created by the Public Library of Science (PLoS)
Langanzeige der Metadaten
DC ElementWertSprache
dc.contributor.advisorProf. Dr. Gunther Heidemannger
dc.creatorRichter, Mats L.-
dc.date.accessioned2022-05-10T09:07:07Z-
dc.date.available2022-05-10T09:07:07Z-
dc.date.issued2022-05-10T09:07:08Z-
dc.identifier.urihttps://doi.org/10.48693/113-
dc.identifier.urihttps://osnadocs.ub.uni-osnabrueck.de/handle/ds-202205106814-
dc.description.abstractThe design and adjustment of convolutional neural network architectures is an opaque and mostly trial and error-driven process. The main reason for this is the lack of proper paradigms beyond general conventions for the development of neural networks architectures and lacking effective insights into the models that can be propagated back to design decision. In order for the task-specific design of deep learning solutions to become more efficient and goal-oriented, novel design strategies need to be developed that are founded on an understanding of convolutional neural network models. This work develops tools for the analysis of the inference process in trained neural network models. Based on these tools, characteristics of convolutional neural network models are identified that can be linked to inefficiencies in predictive and computational performance. Based on these insights, this work presents methods for effectively diagnosing these design faults before and during training with little computational overhead. These findings are empirically tested and demonstrated on architectures with sequential and multi-pathway structures, covering all the common types of convolutional neural network architectures used for classification. Furthermore, this work proposes simple optimization strategies that allow for goal-oriented and informed adjustment of the neural architecture, opening the potential for a less trial-and-error-driven design process.eng
dc.rightsAttribution 3.0 Germany*
dc.rights.urihttp://creativecommons.org/licenses/by/3.0/de/*
dc.subjectDeep Learning, Neural Architecture Design, Computer Vision, Convolutional Neural Networkseng
dc.subject.ddc004 - Informatikger
dc.titleTowards Efficient Convolutional Neural Architecture Designeng
dc.typeDissertation oder Habilitation [doctoralThesis]-
thesis.locationOsnabrück-
thesis.institutionUniversität-
thesis.typeDissertation [thesis.doctoral]-
thesis.date2022-04-20-
orcid.creatorhttps://orcid.org/0000-0002-0991-3047-
dc.contributor.refereeProf. Dr. Julius Schöningger
dc.contributor.refereeProf. Dr. Dimitris Pinotsisger
dc.subject.bk54.72 - Künstliche Intelligenzger
dc.subject.bk54.74 - Maschinelles Sehenger
dc.subject.ccsI.2.10 - Vision and Scene Understandingger
dc.subject.ccsI.5.2 - Design Methodologyger
Enthalten in den Sammlungen:FB08 - E-Dissertationen

Dateien zu dieser Ressource:
Datei Beschreibung GrößeFormat 
thesis_richter.pdfPräsentationsformat43,43 MBAdobe PDF
thesis_richter.pdf
Miniaturbild
Öffnen/Anzeigen


Diese Ressource wurde unter folgender Copyright-Bestimmung veröffentlicht: Lizenz von Creative Commons Creative Commons