AI RESEARCH

Active Learning for Conditional Generative Compressed Sensing

arXiv CS.LG

ArXi:2605.05435v1 Announce Type: new Generative compressed sensing uses the range of a pretrained generator as a nonlinear model for recovering structured signals from limited measurements. We study a conditional version of this problem for image recovery from subsampled Fourier measurements using prompt-conditioned generative models. Our framework separates two roles of conditioning: the prompt used to design the sampling distribution and the prompt used to define the recovery model.