Apple Machine Learning Research has introduced iTARFlow, an advancement in Normalizing Flow generative models that maintains a likelihood-based objective and uses an iterative denoising procedure for sampling. This method achieves competitive performance on ImageNet resolutions, positioning Normalizing Flows as a viable alternative to diffusion models. The research also provides insights into characteristic artifacts produced by iTARFlow, potentially guiding future improvements in the field. AI
影响 Advances in generative models like iTARFlow could lead to more efficient and effective image synthesis and data denoising techniques.
排序理由 This cluster contains research papers detailing new methods in generative modeling and state estimation, including advancements in Normalizing Flows and denoising techniques.
- Apple
- NeurIPS
- David Berthelot
- ImageNet
- iTARFlow
- Jiatao Gu
- Joshua Susskind
- Machine Learning Research
- Shuangfei Zhai
- STARFlow
- Tianrong Chen
- Normalizing Flows
- TARFlow
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