Compressive imaging aims to recover a latent image from under-sampled measurements, suffering from a serious ill-posed inverse problem. Recently, deep neural networks have been applied to this problem with superior results, owing to the learned advanced image priors. These approaches, however, require training separate models for different imaging modalities and sampling ratios, leading to overfitting to specific settings. In this paper, a dynamic proximal unrolling network (dubbed DPUNet) was proposed, which can handle a variety of measurement matrices via one single model without retraining. Specifically, DPUNet can exploit both the embedded observation model via gradient descent and imposed image priors by learned dynamic proximal operators, achieving joint reconstruction. A key component of DPUNet is a dynamic proximal mapping module, whose parameters can be dynamically adjusted at the inference stage and make it adapt to different imaging settings. Experimental results demonstrate that the proposed DPUNet can effectively handle multiple compressive imaging modalities under varying sampling ratios and noise levels via only one trained model, and outperform the state-of-the-art approaches.
翻译:压缩成像的目的是从抽样不足的测量中恢复潜在图像,这种测量存在严重的反向问题。最近,深神经网络被应用到这个问题上,并取得了优异的结果,因为事先学习了先进的图像。但是,这些方法要求为不同的成像模式和取样比例分别培训不同的模型,导致过度适应特定环境。在本文件中,提议了一个动态的准成像无滚式网络(dubbbbed DPUNet),它可以通过一个单一模型处理各种测量矩阵,而无需再培训。具体地说,DPUNet可以利用嵌入式观测模型,通过梯度下移和通过学习的动态准成像仪操作者强制设置图像前程,实现联合重建。DPUNet的一个关键组成部分是一个动态准成像仪模块,其参数可以在发酵阶段动态地调整,使其适应不同的成像环境。实验结果表明,拟议的DPUNet能够通过一个经过培训的模型,在不同的采样比率和噪音水平下有效地处理多种压缩成像模式,并超越了状态。