Diffusion Model
Diffusion models are generative models that create data by reversing a noise-diffusion process, aiming to generate high-quality samples from complex distributions. Current research focuses on improving efficiency through techniques like stochastic Runge-Kutta methods and dynamic model architectures (e.g., Dynamic Diffusion Transformer), as well as enhancing controllability and safety via methods such as classifier-free guidance and reinforcement learning from human feedback. These advancements are significantly impacting various fields, including medical imaging, robotics, and artistic creation, by enabling novel applications in image generation, inverse problem solving, and multi-modal data synthesis.
2251papers
Papers - Page 72
June 4, 2024
June 3, 2024
Diffusion Boosted Trees
ManiCM: Real-time 3D Diffusion Policy via Consistency Model for Robotic Manipulation
Differentially Private Fine-Tuning of Diffusion Models
\Delta-DiT: A Training-Free Acceleration Method Tailored for Diffusion Transformers
Layout Agnostic Scene Text Image Synthesis with Diffusion Models
Constraint-Aware Diffusion Models for Trajectory Optimization
Faster Diffusion Sampling with Randomized Midpoints: Sequential and Parallel
June 2, 2024
DistilDIRE: A Small, Fast, Cheap and Lightweight Diffusion Synthesized Deepfake Detection
Invisible Backdoor Attacks on Diffusion Models
Covariance-Adaptive Sequential Black-box Optimization for Diffusion Targeted Generation
Diffusion Features to Bridge Domain Gap for Semantic Segmentation
Diffusion Tuning: Transferring Diffusion Models via Chain of Forgetting
Deciphering Oracle Bone Language with Diffusion Models