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Plug-and-Play Algorithms for Video Snapshot Compressive Imaging

About

We consider the reconstruction problem of video snapshot compressive imaging (SCI), which captures high-speed videos using a low-speed 2D sensor (detector). The underlying principle of SCI is to modulate sequential high-speed frames with different masks and then these encoded frames are integrated into a snapshot on the sensor and thus the sensor can be of low-speed. On one hand, video SCI enjoys the advantages of low-bandwidth, low-power and low-cost. On the other hand, applying SCI to large-scale problems (HD or UHD videos) in our daily life is still challenging and one of the bottlenecks lies in the reconstruction algorithm. Exiting algorithms are either too slow (iterative optimization algorithms) or not flexible to the encoding process (deep learning based end-to-end networks). In this paper, we develop fast and flexible algorithms for SCI based on the plug-and-play (PnP) framework. In addition to the PnP-ADMM method, we further propose the PnP-GAP (generalized alternating projection) algorithm with a lower computational workload. We first employ the image deep denoising priors to show that PnP can recover a UHD color video with 30 frames from a snapshot measurement. Since videos have strong temporal correlation, by employing the video deep denoising priors, we achieve a significant improvement in the results. Furthermore, we extend the proposed PnP algorithms to the color SCI system using mosaic sensors, where each pixel only captures the red, green or blue channels. A joint reconstruction and demosaicing paradigm is developed for flexible and high quality reconstruction of color video SCI systems. Extensive results on both simulation and real datasets verify the superiority of our proposed algorithm.

Xin Yuan, Yang Liu, Jinli Suo, Fr\'edo Durand, Qionghai Dai• 2021

Related benchmarks

TaskDatasetResultRank
Video ReconstructionKobe
PSNR28.94
21
Video ReconstructionTraffic
PSNR26.11
21
Video ReconstructionRunner
PSNR32.21
21
Video ReconstructionCrash
PSNR25.61
21
Video ReconstructionAerial
PSNR26.51
21
Video ReconstructionDROP
PSNR33.81
21
Video ReconstructionAverage
PSNR26.51
21
Grayscale Video ReconstructionKobe
PSNR32.73
13
Grayscale Video ReconstructionCrash
PSNR27.32
13
Grayscale Video ReconstructionAerial
PSNR27.98
13
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