Liu Yang, Yuan Xin, Suo Jinli, Brady David J, Dai Qionghai
IEEE Trans Pattern Anal Mach Intell. 2019 Dec;41(12):2990-3006. doi: 10.1109/TPAMI.2018.2873587. Epub 2018 Oct 4.
Snapshot compressive imaging (SCI) refers to compressive imaging systems where multiple frames are mapped into a single measurement, with video compressive imaging and hyperspectral compressive imaging as two representative applications. Though exciting results of high-speed videos and hyperspectral images have been demonstrated, the poor reconstruction quality precludes SCI from wide applications. This paper aims to boost the reconstruction quality of SCI via exploiting the high-dimensional structure in the desired signal. We build a joint model to integrate the nonlocal self-similarity of video/hyperspectral frames and the rank minimization approach with the SCI sensing process. Following this, an alternating minimization algorithm is developed to solve this non-convex problem. We further investigate the special structure of the sampling process in SCI to tackle the computational workload and memory issues in SCI reconstruction. Both simulation and real data (captured by four different SCI cameras) results demonstrate that our proposed algorithm leads to significant improvements compared with current state-of-the-art algorithms. We hope our results will encourage the researchers and engineers to pursue further in compressive imaging for real applications.
快照压缩成像(SCI)是指将多个帧映射为单个测量值的压缩成像系统,视频压缩成像和高光谱压缩成像就是两个典型应用。尽管高速视频和高光谱图像已取得令人兴奋的成果,但重建质量较差阻碍了SCI的广泛应用。本文旨在通过利用所需信号中的高维结构来提高SCI的重建质量。我们构建了一个联合模型,将视频/高光谱帧的非局部自相似性和秩最小化方法与SCI传感过程相结合。在此基础上,开发了一种交替最小化算法来解决这个非凸问题。我们进一步研究了SCI采样过程的特殊结构,以解决SCI重建中的计算工作量和内存问题。仿真和实际数据(由四种不同的SCI相机采集)结果表明,与当前的最先进算法相比,我们提出的算法有显著改进。我们希望我们的结果能鼓励研究人员和工程师在压缩成像的实际应用方面进一步探索。