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.
Papers
DAViD: Modeling Dynamic Affordance of 3D Objects using Pre-trained Video Diffusion Models
Hyeonwoo Kim, Sangwon Beak, Hanbyul Joo
D$^2$-DPM: Dual Denoising for Quantized Diffusion Probabilistic Models
Qian Zeng, Jie Song, Han Zheng, Hao Jiang, Mingli Song
VENOM: Text-driven Unrestricted Adversarial Example Generation with Diffusion Models
Hui Kuurila-Zhang, Haoyu Chen, Guoying Zhao
Concentration of Measure for Distributions Generated via Diffusion Models
Reza Ghane, Anthony Bao, Danil Akhtiamov, Babak Hassibi
Erasing Noise in Signal Detection with Diffusion Model: From Theory to Application
Xiucheng Wang, Peilin Zheng, Nan Cheng
Global Search for Optimal Low Thrust Spacecraft Trajectories using Diffusion Models and the Indirect Method
Jannik Graebner, Ryne Beeson
A General Framework for Inference-time Scaling and Steering of Diffusion Models
Raghav Singhal, Zachary Horvitz, Ryan Teehan, Mengye Ren, Zhou Yu, Kathleen McKeown, Rajesh Ranganath
Padding Tone: A Mechanistic Analysis of Padding Tokens in T2I Models
Michael Toker, Ido Galil, Hadas Orgad, Rinon Gal, Yoad Tewel, Gal Chechik, Yonatan Belinkov
From discrete-time policies to continuous-time diffusion samplers: Asymptotic equivalences and faster training
Julius Berner, Lorenz Richter, Marcin Sendera, Jarrid Rector-Brooks, Nikolay Malkin
Diffusion Models for Smarter UAVs: Decision-Making and Modeling
Yousef Emami, Hao Zhou, Luis Almeida, Kai Li
Alignment without Over-optimization: Training-Free Solution for Diffusion Models
Sunwoo Kim, Minkyu Kim, Dongmin Park
EXION: Exploiting Inter- and Intra-Iteration Output Sparsity for Diffusion Models
Jaehoon Heo, Adiwena Putra, Jieon Yoon, Sungwoong Yune, Hangyeol Lee, Ji-Hoon Kim, Joo-Young Kim
Decentralized Diffusion Models
David McAllister, Matthew Tancik, Jiaming Song, Angjoo Kanazawa
Accelerated Diffusion Models via Speculative Sampling
Valentin De Bortoli, Alexandre Galashov, Arthur Gretton, Arnaud Doucet
ResPanDiff: Diffusion Model with Disentangled Modulations for Image Fusion
Shiqi Cao, Liangjian Deng, Shangqi Deng
Geophysical inverse problems with measurement-guided diffusion models
Matteo Ravasi
TREAD: Token Routing for Efficient Architecture-agnostic Diffusion Training
Felix Krause, Timy Phan, Vincent Tao Hu, Björn Ommer
ZSVC: Zero-shot Style Voice Conversion with Disentangled Latent Diffusion Models and Adversarial Training
Xinfa Zhu, Lei He, Yujia Xiao, Xi Wang, Xu Tan, Sheng Zhao, Lei Xie