Capturing high-dimensional (HD) data is a long-term challenge in signal processing and related fields. Snapshot compressive imaging (SCI) uses a two-dimensional (2D) detector to capture HD ($\ge3$D) data in a {\em snapshot} measurement. Via novel optical designs, the 2D detector samples the HD data in a {\em compressive} manner; following this, algorithms are employed to reconstruct the desired HD data-cube. SCI has been used in hyperspectral imaging, video, holography, tomography, focal depth imaging, polarization imaging, microscopy, \etc.~Though the hardware has been investigated for more than a decade, the theoretical guarantees have only recently been derived. Inspired by deep learning, various deep neural networks have also been developed to reconstruct the HD data-cube in spectral SCI and video SCI. This article reviews recent advances in SCI hardware, theory and algorithms, including both optimization-based and deep-learning-based algorithms. Diverse applications and the outlook of SCI are also discussed.
翻译:获取高维(HD)数据是信号处理和相关领域的一个长期挑战。光速压缩成像(SCI)使用二维(2D)检测器,在速速成测量中捕捉HD(Ge3$D)数据。通过新的光学设计,2D探测器以速成方式取样HD数据;在此之后,采用算法重建所需的HD数据立方体。SCI一直用于超光谱成像、视频、全息摄影、透视、焦深成像、极离层成像、显微镜、\etc。尽管硬件已经调查了十多年,但最近才得到理论保障。在深层学习的启发下,还开发了各种深层神经网络,以重建光谱SCI和视频SCI的HD数据立方体。文章回顾了SCI硬件、理论和算法的最新进展,包括基于优化和深层学习的算法。还讨论了SCI的多样化应用和前景。