cs.AI updates on arXiv.org 10月13日
基于流模型的文本到图像生成多样性提升
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本文提出一种无训练的推理时控制机制,使流模型本身具备多样性意识,通过特征空间目标鼓励轨迹间的横向扩散,并通过时间计划随机扰动重新引入不确定性,从而在不降低图像细节或提示准确性的情况下,提升文本到图像生成的多样性。

arXiv:2510.09060v1 Announce Type: new Abstract: Flow-based text-to-image models follow deterministic trajectories, forcing users to repeatedly sample to discover diverse modes, which is a costly and inefficient process. We present a training-free, inference-time control mechanism that makes the flow itself diversity-aware. Our method simultaneously encourages lateral spread among trajectories via a feature-space objective and reintroduces uncertainty through a time-scheduled stochastic perturbation. Crucially, this perturbation is projected to be orthogonal to the generation flow, a geometric constraint that allows it to boost variation without degrading image details or prompt fidelity. Our procedure requires no retraining or modification to the base sampler and is compatible with common flow-matching solvers. Theoretically, our method is shown to monotonically increase a volume surrogate while, due to its geometric constraints, approximately preserving the marginal distribution. This provides a principled explanation for why generation quality is robustly maintained. Empirically, across multiple text-to-image settings under fixed sampling budgets, our method consistently improves diversity metrics such as the Vendi Score and Brisque over strong baselines, while upholding image quality and alignment.

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文本到图像生成 流模型 多样性提升 不确定性引入 图像质量维护
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