In compressed sensing, the goal is to reconstruct the signal from an underdetermined system of linear measurements. Thus, prior knowledge about the signal of interest and its structure is required. Additionally, in many scenarios, the signal has an unknown orientation prior to measurements. To address such recovery problems, we propose using equivariant generative models as a prior, which encapsulate orientation information in their latent space. Thereby, we show that signals with unknown orientations can be recovered with iterative gradient descent on the latent space of these models and provide additional theoretical recovery guarantees. We construct an equivariant variational autoencoder and use the decoder as generative prior for compressed sensing. We discuss additional potential gains of the proposed approach in terms of convergence and latency.
翻译:在压缩遥感中,目标是从一个不确定的线性测量系统重建信号,因此,需要事先了解有关意向信号及其结构。此外,在许多情况中,该信号在测量前有未知的方向。为了解决这种回收问题,我们建议使用等同的基因化模型,将定向信息嵌入其潜藏空间。因此,我们表明,具有未知方向的信号可以在这些模型的潜伏空间上以迭代梯度下降的方式恢复,并提供额外的理论回收保障。我们建造一个等同变异式自动电解码器,并使用解码器作为压缩感测前的基因组。我们讨论了拟议方法在趋同和延缓性方面的其他潜在收益。