Generative Modeling
Generative modeling aims to create new data instances that resemble a given dataset, focusing on learning the underlying probability distribution. Current research emphasizes hybrid approaches combining the strengths of autoregressive models (for global context) and diffusion models (for high-quality local details), as well as advancements in flow-based models and score-based methods. These techniques are significantly impacting diverse fields, including image generation, 3D modeling, time series forecasting, and even scientific applications like molecular dynamics simulation and medical image synthesis, by enabling the creation of realistic and diverse synthetic data.
Papers
Generative Modeling in Sinogram Domain for Sparse-view CT Reconstruction
Bing Guan, Cailian Yang, Liu Zhang, Shanzhou Niu, Minghui Zhang, Yuhao Wang, Weiwen Wu, Qiegen Liu
Generative Modeling in Structural-Hankel Domain for Color Image Inpainting
Zihao Li, Chunhua Wu, Shenglin Wu, Wenbo Wan, Yuhao Wang, Qiegen Liu
MAGE: MAsked Generative Encoder to Unify Representation Learning and Image Synthesis
Tianhong Li, Huiwen Chang, Shlok Kumar Mishra, Han Zhang, Dina Katabi, Dilip Krishnan
Challenges in creative generative models for music: a divergence maximization perspective
Axel Chemla--Romeu-Santos, Philippe Esling
PointInverter: Point Cloud Reconstruction and Editing via a Generative Model with Shape Priors
Jaeyeon Kim, Binh-Son Hua, Duc Thanh Nguyen, Sai-Kit Yeung