Jin Chengzhi, Qi Dalong, Yao Jiali, He Yilin, Ding Pengpeng, Guo Zihan, Huang Zhengqi, He Yu, Yao Yunhua, Wang Zhiyong, Sun Zhenrong, Zhang Shian
Opt Express. 2022 Aug 15;30(17):31157-31170. doi: 10.1364/OE.469345.
Being capable of passively capturing transient scenes occurring in picoseconds and even shorter time with an extremely large sequence depth in a snapshot, compressed ultrafast photography (CUP) has aroused tremendous attention in ultrafast optical imaging. However, the high compression ratio induced by large sequence depth brings the problem of low image quality in image reconstruction, preventing CUP from observing transient scenes with fine spatial information. To overcome these restrictions, we propose an efficient image reconstruction algorithm with multi-scale (MS) weighted denoising based on the plug-and-play (PnP) based alternating direction method of multipliers (ADMM) framework for multi-channel coupled CUP (MC-CUP), named the MCMS-PnP algorithm. By removing non-Gaussian distributed noise using weighted MS denoising during each iteration of the ADMM, and adaptively adjusting the weights via sufficiently exploiting the coupling information among different acquisition channels collected by MC-CUP, a synergistic combination of hardware and algorithm can be realized to significantly improve the quality of image reconstruction. Both simulation and experimental results demonstrate that the proposed adaptive MCMS-PnP algorithm can effectively improve the accuracy and quality of reconstructed images in MC-CUP, and extend the detectable range of CUP to transient scenes with fine structures.
压缩超快摄影(CUP)能够在皮秒甚至更短时间内被动捕捉瞬态场景,且在单次拍摄中具有极大的序列深度,这使其在超快光学成像领域引起了极大关注。然而,大序列深度导致的高压缩比给图像重建带来了低图像质量问题,限制了CUP对具有精细空间信息的瞬态场景的观测。为克服这些限制,我们针对多通道耦合CUP(MC-CUP),基于乘子交替方向法(ADMM)框架的即插即用(PnP),提出了一种具有多尺度(MS)加权去噪的高效图像重建算法,即MCMS-PnP算法。通过在ADMM的每次迭代中使用加权MS去噪去除非高斯分布噪声,并充分利用MC-CUP采集的不同采集通道之间的耦合信息自适应调整权重,可实现硬件与算法的协同结合,显著提高图像重建质量。仿真和实验结果均表明,所提出的自适应MCMS-PnP算法能够有效提高MC-CUP中重建图像的精度和质量,并将CUP的可检测范围扩展到具有精细结构的瞬态场景。