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목록Generative Models (1)
평범한 필기장
https://arxiv.org/abs/2511.13720 Back to Basics: Let Denoising Generative Models DenoiseToday's denoising diffusion models do not "denoise" in the classical sense, i.e., they do not directly predict clean images. Rather, the neural networks predict noise or a noised quantity. In this paper, we suggest that predicting clean data and predictingarxiv.orgAbstractAbstract를 가볍게 요약하면 아래와 같다.Clean image..
AI/Generative Models
2026. 3. 4. 22:56