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- Title
Survey on low-level controllable image synthesis with deep learning.
- Authors
Zhang, Shixiong; Li, Jiao; Yang, Lu
- Abstract
Deep learning, particularly generative models, has inspired controllable image synthesis methods and applications. These approaches aim to generate specific visual content using latent prompts. To explore low-level controllable image synthesis for precise rendering and editing tasks, we present a survey of recent works in this field using deep learning. We begin by discussing data sets and evaluation indicators for low-level controllable image synthesis. Then, we review the state-of-the-art research on geometrically controllable image synthesis, focusing on viewpoint/pose and structure/shape controllability. Additionally, we cover photometrically controllable image synthesis methods for 3D re-lighting studies. While our focus is on algorithms, we also provide a brief overview of related applications, products and resources for practitioners.
- Subjects
DEEP learning; ALGORITHMS; ARTIFICIAL intelligence; SOCIAL network analysis; STATISTICAL correlation
- Publication
Electronic Research Archive, 2023, Vol 31, Issue 12, p1
- ISSN
2688-1594
- Publication type
Article
- DOI
10.3934/era.2023374