Kristina MonakhovaKyrollos YannyNeerja AggarwalLaura Waller
Hyperspectral imaging is useful for applications ranging from medical diagnostics to agricultural crop monitoring; however, traditional scanning hyperspectral imagers are prohibitively slow and expensive for widespread adoption. Snapshot techniques exist but are often confined to bulky benchtop setups or have low spatio-spectral resolution. In this paper, we propose a novel, compact, and inexpensive computational camera for snapshot hyperspectral imaging. Our system consists of a tiled spectral filter array placed directly on the image sensor and a diffuser placed close to the sensor. Each point in the world maps to a unique pseudorandom pattern on the spectral filter array, which encodes multiplexed spatio-spectral information. By solving a sparsity-constrained inverse problem, we recover the hyperspectral volume with sub-super-pixel resolution. Our hyperspectral imaging framework is flexible and can be designed with contiguous or non-contiguous spectral filters that can be chosen for a given application. We provide theory for system design, demonstrate a prototype device, and present experimental results with high spatio-spectral resolution.
Yang ZhangXinyu LiuChang WangZhou XuQiangbo ZhangZhenrong Zheng
Boyang LiZ. J. XiaoZaikun ZhangShuqi WangHushan WangYuxi Fu
Kristina MonakhovaKyrollos YannyLaura Waller
Christian FoleyKristina MonakhovaKyrollos YannyLaura Waller
Hao LiWenzhong LiuBiqin DongJ KałuznyAmani A. FawziHao F. Zhang