Beyond Randomness: Understand the Order of the Noise in Diffusion
PositiveArtificial Intelligence
The recent paper titled 'Beyond Randomness: Understand the Order of the Noise in Diffusion' challenges the conventional view of noise in text-driven content generation (T2C) models. It reveals that noise is not merely random but is rich with semantic information that can be manipulated to enhance content generation. The authors propose a novel 'Semantic Erasure-Injection' process, which allows for the removal of unwanted semantics from the noise and the injection of desired semantics, thereby optimizing the generation process. Experimental results indicate that this method is effective across various T2C models, including those based on DiT and UNet architectures. This research is significant as it provides a new understanding of how noise can be utilized to improve AI-generated content, making it more coherent and contextually relevant.
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