Image Synthesis under Limited Data: A Survey and Taxonomy
Mengping Yang, Zhe Wang

TL;DR
This paper provides a comprehensive survey and taxonomy of image synthesis techniques that operate effectively under limited data conditions, addressing challenges, solutions, and future directions in the field.
Contribution
It offers the first systematic review and taxonomy of methods for image synthesis with limited data, including problem definition, challenges, and future research directions.
Findings
Analyzes various approaches and their limitations in limited data scenarios
Provides a taxonomy categorizing existing methods and solutions
Discusses future research directions and potential applications
Abstract
Deep generative models, which target reproducing the given data distribution to produce novel samples, have made unprecedented advancements in recent years. Their technical breakthroughs have enabled unparalleled quality in the synthesis of visual content. However, one critical prerequisite for their tremendous success is the availability of a sufficient number of training samples, which requires massive computation resources. When trained on limited data, generative models tend to suffer from severe performance deterioration due to overfitting and memorization. Accordingly, researchers have devoted considerable attention to develop novel models that are capable of generating plausible and diverse images from limited training data recently. Despite numerous efforts to enhance training stability and synthesis quality in the limited data scenarios, there is a lack of a systematic survey…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Image and Video Retrieval Techniques · Advanced Vision and Imaging
