Training Restricted Boltzmann Machines (RBMs) with an out-of-equilibrium approach enables fast and accurate generation of high-quality, label-specific data in complex structured datasets, outperforming traditional equilibrium-based training methods.
This paper introduces Hamiltonian Velocity Predictors (HVPs) for score matching and generative modeling, leveraging Hamiltonian dynamics to improve upon existing methods like diffusion models and flow matching.
Leveraging self-supervised information from pseudo videos, created by applying data augmentation to original images, can significantly improve the performance of image generative models.
Discrete Distribution Networks (DDN) offer a new approach to generative modeling by approximating data distributions using hierarchical discrete distributions, enabling efficient data representation and unique zero-shot conditional generation capabilities.
Geometric generative models based on morphological equivariant PDEs and GANs outperform traditional CNNs in image generation tasks.
提案されたDDMIは、高品質な暗黙のニューラル表現を生成するためのドメインに依存しない潜在拡散モデルです。
SPI-GANは、高いサンプリング品質と多様性を実現しつつ、サンプリング時間を劇的に短縮する手法であり、CIFAR-10とCelebA-HQ-256のデータセットにおいて最もバランスの取れたモデルの1つである。
Generalized Consistency Trajectory Models (GCTMs) extend CTMs to enable translation between arbitrary distributions, enhancing diffusion-based image manipulation tasks.
Enhanced GAN-based denoising method SPI-GAN reduces sampling time while maintaining high quality and diversity.
CTM introduces a unified framework for generative models, improving sampling efficiency and quality by integrating score-based and distillation strategies.