suxuann/ddib

The noise image obtained by inverse DDIM is not like a Gaussian distribution!

Opened this issue · 3 comments

I try to use DDIB to achieve the MR-CT image translation. I have trained diffusion models for unconditional generation of MR and CT images respectively. Given an MR image, I use MR diffusion model and inverse DDIM to obtain the corresponding noise image in latent space (steps=1000, the total step of trained diffusion model is also 1000). However, this noise image does not seem like an isotropic noise distribution (as shown in Fig. 1 in the paper):

图片1

Taking the obtained noise image as the input of CT diffusion model and sampling with forward DDIM, the generated CT image is not ideal.

Could you please share your procedure of training on your own datasets?I would appreciate it if you do so!

I would also appreciate it if you could share a little about your own training process.

I also encountered the same issue