cs.AI updates on arXiv.org 10月14日
新型逆问题求解框架C-DPS
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本文提出了一种名为C-DPS的新型框架,用于解决逆问题。该框架通过消除约束调整或似然近似的需要,实现更准确的递归采样,并在多个逆问题基准测试中优于现有方法。

arXiv:2510.09676v1 Announce Type: cross Abstract: Inverse problems, where the goal is to recover an unknown signal from noisy or incomplete measurements, are central to applications in medical imaging, remote sensing, and computational biology. Diffusion models have recently emerged as powerful priors for solving such problems. However, existing methods either rely on projection-based techniques that enforce measurement consistency through heuristic updates, or they approximate the likelihood $p(\boldsymbol{y} \mid \boldsymbol{x})$, often resulting in artifacts and instability under complex or high-noise conditions. To address these limitations, we propose a novel framework called \emph{coupled data and measurement space diffusion posterior sampling} (C-DPS), which eliminates the need for constraint tuning or likelihood approximation. C-DPS introduces a forward stochastic process in the measurement space ${\boldsymbol{y}_t}$, evolving in parallel with the data-space diffusion ${\boldsymbol{x}t}$, which enables the derivation of a closed-form posterior $p(\boldsymbol{x}{t-1} \mid \boldsymbol{x}t, \boldsymbol{y}{t-1})$. This coupling allows for accurate and recursive sampling based on a well-defined posterior distribution. Empirical results demonstrate that C-DPS consistently outperforms existing baselines, both qualitatively and quantitatively, across multiple inverse problem benchmarks.

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逆问题 扩散模型 数据采样
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