Recent deep network-based compressive sensing (CS) methods have achieved great success. However, most of them regard different sampling matrices as different independent tasks and need to train a specific model for each target sampling matrix. Such practices give rise to inefficiency in computing and suffer from poor generalization ability. In this paper, we propose a novel COntrollable Arbitrary-Sampling neTwork, dubbed COAST, to solve CS problems of arbitrary-sampling matrices (including unseen sampling matrices) with one single model. Under the optimization-inspired deep unfolding framework, our COAST exhibits good interpretability. In COAST, a random projection augmentation (RPA) strategy is proposed to promote the training diversity in the sampling space to enable arbitrary sampling, and a controllable proximal mapping module (CPMM) and a plug-and-play deblocking (PnP-D) strategy are further developed to dynamically modulate the network features and effectively eliminate the blocking artifacts, respectively. Extensive experiments on widely used benchmark datasets demonstrate that our proposed COAST is not only able to handle arbitrary sampling matrices with one single model but also to achieve state-of-the-art performance with fast speed. The source code is available on https://github.com/jianzhangcs/COAST.
翻译:最近以网络为基础的深层压缩遥感(CS)方法取得了巨大成功,然而,其中多数人认为不同的抽样矩阵是不同的独立任务,需要为每个目标抽样矩阵培训一个具体模型;这些做法导致计算效率低下,而且缺乏概括性能力;在本文件中,我们提议采用一种新的可分类的任意抽样工作(称为COAST),以解决任意抽样矩阵(包括无形抽样矩阵)的任意抽样(包括无形抽样矩阵)问题;在优化的深度开发框架内,我们的COAST显示出良好的可解释性。在COAST中,建议随机预测增强(RPA)战略以促进取样空间的培训多样性,以便能够进行任意抽样,并有一个可控制的准Ximal绘图模块(CPMM)和插和游戏阻塞(PnP-D)战略,分别以动态调节网络特征和有效消除阻塞文物。在广泛使用的基准数据集上的广泛实验表明,我们提议的COASTT不只是能够处理任意取样的,而且能够用一个单一的模型实现源/源的速度。