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From the perspective of diffusion model principle, why are the representations generated by DDPM from remote sensing images more robust and distinguishable than those obtained by UNet networks? #44

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lzybesthahaha opened this issue Apr 22, 2024 · 1 comment

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@lzybesthahaha
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Hello. Your article DDPM-CD has been very helpful to me, and I have a question I would like to discuss with you. The question is as follow.

From the perspective of diffusion model principle, why are the representations generated by DDPM from remote sensing images more robust and distinguishable than those obtained by UNet networks?

Looking forward to your reply, thank you.
Sincerely yours.

@jehovahxu
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I don't understand either. When T is large enough, the feature is approximate to gaussian noise. It is very different to use an auto-encoder such as UNet directly. So it is hard to understand why the image representations can be extracted from gaussion noise in the diffusion process.

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