AI RESEARCH

P-Flow: Proxy-gradient Flows for Linear Inverse Problems

arXiv CS.LG

ArXi:2605.08328v1 Announce Type: new Generative models based on flow matching have emerged as a powerful paradigm for inverse problems, offering straighter trajectories and faster sampling compared to diffusion models. However, existing approaches often necessitate differentiating through unrolled paths, leading to numerical instability and prohibitive computational overhead. To address this, we propose P-Flow, a framework that stabilizes the reconstruction process by leveraging a proxy gradient to update the source point.