English

GAP-net for Snapshot Compressive Imaging

Image and Video Processing 2020-12-16 v1

Abstract

Snapshot compressive imaging (SCI) systems aim to capture high-dimensional (3\ge3D) images in a single shot using 2D detectors. SCI devices include two main parts: a hardware encoder and a software decoder. The hardware encoder typically consists of an (optical) imaging system designed to capture {compressed measurements}. The software decoder on the other hand refers to a reconstruction algorithm that retrieves the desired high-dimensional signal from those measurements. In this paper, using deep unfolding ideas, we propose an SCI recovery algorithm, namely GAP-net, which unfolds the generalized alternating projection (GAP) algorithm. At each stage, GAP-net passes its current estimate of the desired signal through a trained convolutional neural network (CNN). The CNN operates as a denoiser that projects the estimate back to the desired signal space. For the GAP-net that employs trained auto-encoder-based denoisers, we prove a probabilistic global convergence result. Finally, we investigate the performance of GAP-net in solving video SCI and spectral SCI problems. In both cases, GAP-net demonstrates competitive performance on both synthetic and real data. In addition to having high accuracy and high speed, we show that GAP-net is flexible with respect to signal modulation implying that a trained GAP-net decoder can be applied in different systems. Our code is at https://github.com/mengziyi64/ADMM-net.

Keywords

Cite

@article{arxiv.2012.08364,
  title  = {GAP-net for Snapshot Compressive Imaging},
  author = {Ziyi Meng and Shirin Jalali and Xin Yuan},
  journal= {arXiv preprint arXiv:2012.08364},
  year   = {2020}
}

Comments

30 pages, 14 figures; State-of-the-art algorithms for Snapshot Compressive Imaging

R2 v1 2026-06-23T20:59:20.374Z