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I am new and trying to understand parameters for AutoEncoderKL and DiffusionModelUNet (Tutorial - 3D Latent Diffusion Model - 3d_ldm_tutorial.ipynb). This tutorial uses Task01_BrainTumour dataset.
Here are questions:
(1) AutoEncoderKL
The AutoEnCoderKL is defined as:
autoencoder = AutoencoderKL(
spatial_dims=3,
in_channels=1,
out_channels=1,
channels=(32, 64, 64),
latent_channels=3,
num_res_blocks=1,
norm_num_groups=16,
attention_levels=(False, False, True),
)
autoencoder.to(device)
in above, the in_channels = 1 and out_channels = 1. are defined and I am assuming that only one modality (out of four is selected and therefore in_channels = 1 is defined accordingly. I am also assuming that AutoEnCoderKL requires in_channels = out_channels and there fore out_channels=1 is defined.
Is my thinking correct? If yes, by default, which modality will be selected? Can you select specific modality?
(2) Diffusion Model
The Diffusion Model is defined as:
unet = DiffusionModelUNet(
spatial_dims=3,
in_channels=3,
out_channels=3,
num_res_blocks=1,
channels=(32, 64, 64),
attention_levels=(False, True, True),
num_head_channels=(0, 64, 64),
)
unet.to(device)
**(a) I am assuming that out_channels represet three output classes - Edema, Enhancing Tumor and Nectrotic Core. Am I thinking correctly?
(b) But, how is in_channels = 3 derived?**
Will appreciate for feedback.
Thanks
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