

Diffusion Model With Perceptual Loss
Overview :
This paper introduces a diffusion model based on perceptual loss, which improves sample quality by directly incorporating perceptual loss into the diffusion training process. For conditional generation, this method only improves sample quality without affecting the conditional input, thus not sacrificing sample diversity. For unconditional generation, this method can also improve sample quality. The paper details the principles and experimental results of the method.
Target Users :
This diffusion model can be used to generate more realistic samples, suitable for both unconditional and conditional generation tasks.
Features
Directly incorporate perceptual loss into diffusion training
Improve the quality of samples in conditional generation
Improve the quality of samples in unconditional generation
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