Generative Adversarial Network
Generative Adversarial Networks (GANs) are a class of deep learning models designed to generate new data instances that resemble a training dataset. Current research focuses on improving GAN training stability, enhancing the quality and diversity of generated data, and applying GANs to diverse fields like medical imaging, drug discovery, and time series analysis, often incorporating techniques like contrastive learning and disentangled representation learning to improve model performance and interpretability. The ability of GANs to synthesize realistic data addresses critical limitations in data availability and annotation costs across numerous scientific disciplines and practical applications, leading to advancements in areas ranging from medical diagnosis to robotic control.
Papers
Creating Realistic Anterior Segment Optical Coherence Tomography Images using Generative Adversarial Networks
Jad F. Assaf, Anthony Abou Mrad, Dan Z. Reinstein, Guillermo Amescua, Cyril Zakka, Timothy Archer, Jeffrey Yammine, Elsa Lamah, Michèle Haykal, Shady T. Awwad
Boosting Model Inversion Attacks with Adversarial Examples
Shuai Zhou, Tianqing Zhu, Dayong Ye, Xin Yu, Wanlei Zhou
Radio Generation Using Generative Adversarial Networks with An Unrolled Design
Weidong Wang, Jiancheng An, Hongshu Liao, Lu Gan, Chau Yuen
A New Paradigm for Generative Adversarial Networks based on Randomized Decision Rules
Sehwan Kim, Qifan Song, Faming Liang
Machine Learning methods for simulating particle response in the Zero Degree Calorimeter at the ALICE experiment, CERN
Jan Dubiński, Kamil Deja, Sandro Wenzel, Przemysław Rokita, Tomasz Trzciński
Penalty Gradient Normalization for Generative Adversarial Networks
Tian Xia
PP-GAN : Style Transfer from Korean Portraits to ID Photos Using Landmark Extractor with GAN
Jongwook Si, Sungyoung Kim
Probabilistic Matching of Real and Generated Data Statistics in Generative Adversarial Networks
Philipp Pilar, Niklas Wahlström
Unsupervised Text Embedding Space Generation Using Generative Adversarial Networks for Text Synthesis
Jun-Min Lee, Tae-Bin Ha
Exploring the Relationship between Samples and Masks for Robust Defect Localization
Jiang Lin, Yaping Yan
Training generative models from privatized data
Daria Reshetova, Wei-Ning Chen, Ayfer Özgür
PUGAN: Physical Model-Guided Underwater Image Enhancement Using GAN with Dual-Discriminators
Runmin Cong, Wenyu Yang, Wei Zhang, Chongyi Li, Chun-Le Guo, Qingming Huang, Sam Kwong
Taming Diffusion Models for Music-driven Conducting Motion Generation
Zhuoran Zhao, Jinbin Bai, Delong Chen, Debang Wang, Yubo Pan