liu.seSearch for publications in DiVA
Change search
CiteExportLink to record
Permanent link

Direct link
Cite
Citation style
  • apa
  • ieee
  • modern-language-association-8th-edition
  • vancouver
  • oxford
  • Other style
More styles
Language
  • de-DE
  • en-GB
  • en-US
  • fi-FI
  • nn-NO
  • nn-NB
  • sv-SE
  • Other locale
More languages
Output format
  • html
  • text
  • asciidoc
  • rtf
A Survey of Image Synthesis Methods for Visual Machine Learning
Linköping University, Department of Science and Technology, Media and Information Technology. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0003-0298-937X
Linköping University, Department of Science and Technology, Media and Information Technology. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0002-9217-9997
Linköping University, Department of Science and Technology, Media and Information Technology. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0002-7765-1747
2020 (English)In: Computer graphics forum (Print), ISSN 0167-7055, E-ISSN 1467-8659, Vol. 39, no 6, p. 426-451Article in journal (Refereed) Published
Abstract [en]

Image synthesis designed for machine learning applications provides the means to efficiently generate large quantities of training data while controlling the generation process to provide the best distribution and content variety. With the demands of deep learning applications, synthetic data have the potential of becoming a vital component in the training pipeline. Over the last decade, a wide variety of training data generation methods has been demonstrated. The potential of future development calls to bring these together for comparison and categorization. This survey provides a comprehensive list of the existing image synthesis methods for visual machine learning. These are categorized in the context of image generation, using a taxonomy based on modelling and rendering, while a classification is also made concerning the computer vision applications they are used. We focus on the computer graphics aspects of the methods, to promote future image generation for machine learning. Finally, each method is assessed in terms of quality and reported performance, providing a hint on its expected learning potential. The report serves as a comprehensive reference, targeting both groups of the applications and data development sides. A list of all methods and papers reviewed herein can be found at https://computergraphics.on.liu.se/image_synthesis_methods_for_visual_machine_learning/.

Place, publisher, year, edition, pages
John Wiley & Sons, 2020. Vol. 39, no 6, p. 426-451
Keywords [en]
methods and applications
National Category
Computer graphics and computer vision
Identifiers
URN: urn:nbn:se:liu:diva-169839DOI: 10.1111/cgf.14047ISI: 000565504000001Scopus ID: 2-s2.0-85090446425OAI: oai:DiVA.org:liu-169839DiVA, id: diva2:1469073
Funder
Wallenberg AI, Autonomous Systems and Software Program (WASP)
Note

Funding agencies: strategic research environment ELLIIT; Autonomous Systems and Software Program (WASP) - Knut and Alice Wallenberg Foundation

Available from: 2020-09-20 Created: 2020-09-20 Last updated: 2025-02-07Bibliographically approved
In thesis
1. Synthetic data for visual machine learning: A data-centric approach
Open this publication in new window or tab >>Synthetic data for visual machine learning: A data-centric approach
2022 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Deep learning allows computers to learn from observations, or else training data. Successful application development requires skills in neural network design, adequate computational resources, and a training data distribution that covers the application do-main. We are currently witnessing an artificial intelligence (AI) outbreak with enough computational power to train very deep networks and build models that achieve similar or better than human performance. The crucial factor for the algorithms to succeed has proven to be the training data fed to the learning process. Too little or low quality or out-of-the-target distribution data will lead to poorly performing models no matter the capacity and the data regularization methods.

This thesis is a data-centric approach to AI and presents a set of contributions related to synthesizing images for training supervised visual machine learning. It is motivated by the profound potential of synthetic data in cases of low availability of captured data, expensive acquisition and annotation, and privacy and ethical issues. The presented work aims to generate images similar to samples drawn from the target distribution and evaluate the generated data as the sole training data source and in conjunction with captured imagery. For this, two synthesis methods are explored: computer graphics and generative modeling. Computer graphics-based generation methods and synthetic datasets for computer vision tasks are thoroughly reviewed. In the same context, a system employing procedural modeling and physically-based rendering is introduced for data generation for urban scene understanding. The scheme is flexible, easily scalable, and produces complex and diverse images with pixel-perfect annotations at no cost. Generative Adversarial Networks (GANs) are also used to generate images for small data scenarios augmentation. The strategy advances the model’s performance and robustness. Finally, ensembles of independently trained GANs investigate ways to improve images’ diversity and create synthetic data to serve as the only training source.

The application areas of the presented contributions relate to two image modalities, natural and histopathology images, to cover different aspects in the generation methods and the tasks’ characteristics and requirements. There are showcased synthesized examples of natural images for automotive applications and weather classification, and histopathology images for breast cancer and colon adenocarcinoma metastasis detection. This thesis, as a whole, promotes data-centric supervised deep learning development by highlighting the potential of synthetic data as a training data resource. It emphasizes the control over the formation process, the ability of multi-modality formats, and the automatic generation of annotations.

Place, publisher, year, edition, pages
Linköping: Linköping University Electronic Press, 2022. p. 115
Series
Linköping Studies in Science and Technology. Dissertations, ISSN 0345-7524 ; 2202
Keywords
Training data, Synthetic images, Computer graphics, Generative modeling, Natural images, Histopathology, Digital pathology, Machine learning, Deep learning
National Category
Medical Imaging
Identifiers
urn:nbn:se:liu:diva-182336 (URN)10.3384/9789179291754 (DOI)9789179291747 (ISBN)9789179291754 (ISBN)
Public defence
2022-02-14, Domteatern, Visualiseringscenter C, Kungsgatan 54, Norrköping, 09:15 (English)
Opponent
Supervisors
Note

ISBN for PDF has been added in the PDF-version.

Available from: 2022-01-17 Created: 2022-01-17 Last updated: 2025-02-09Bibliographically approved

Open Access in DiVA

fulltext(6395 kB)653 downloads
File information
File name FULLTEXT01.pdfFile size 6395 kBChecksum SHA-512
ffe6d53135ece15e8911774dd97605a603c1ce694be6b0ed2bf4970220872eb344cb24242f6d38f90446fe0bf76e19667129d464a11e572dc142bc0820335bb8
Type fulltextMimetype application/pdf

Other links

Publisher's full textScopus

Authority records

Tsirikoglou, ApostoliaEilertsen, GabrielUnger, Jonas

Search in DiVA

By author/editor
Tsirikoglou, ApostoliaEilertsen, GabrielUnger, Jonas
By organisation
Media and Information TechnologyFaculty of Science & Engineering
In the same journal
Computer graphics forum (Print)
Computer graphics and computer vision

Search outside of DiVA

GoogleGoogle Scholar
Total: 654 downloads
The number of downloads is the sum of all downloads of full texts. It may include eg previous versions that are now no longer available

doi
urn-nbn

Altmetric score

doi
urn-nbn
Total: 723 hits
CiteExportLink to record
Permanent link

Direct link
Cite
Citation style
  • apa
  • ieee
  • modern-language-association-8th-edition
  • vancouver
  • oxford
  • Other style
More styles
Language
  • de-DE
  • en-GB
  • en-US
  • fi-FI
  • nn-NO
  • nn-NB
  • sv-SE
  • Other locale
More languages
Output format
  • html
  • text
  • asciidoc
  • rtf