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Untrained Neural Nets for Snapshot Compressive Imaging: Theory and Algorithms

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Snapshot compressive imaging (SCI) recovers high-dimensional (3D) data cubes from a single 2D measurement, enabling diverse applications like video and hyperspectral imaging to go beyond standard techniques in terms of acquisition speed and efficiency. In this paper, we focus on SCI recovery algorithms that employ untrained neural networks (UNNs), such as deep image prior (DIP), to model source structure. Such UNN-based methods are appealing as they have the potential of avoiding the computationally intensive retraining required for different source models and different measurement scenarios. We first develop a theoretical framework for characterizing the performance of such UNN-based methods. The theoretical framework, on the one hand, enables us to optimize the parameters of data-modulating masks, and on the other hand, provides a fundamental connection between the number of data frames that can be recovered from a single measurement to the parameters of the untrained NN. We also employ the recently proposed bagged-deep-image-prior (bagged-DIP) idea to develop SCI Bagged Deep Video Prior (SCI-BDVP) algorithms that address the common challenges faced by standard UNN solutions. Our experimental results show that in video SCI our proposed solution achieves state-of-the-art among UNN methods, and in the case of noisy measurements, it even outperforms supervised solutions.

Mengyu Zhao, Xi Chen, Xin Yuan, Shirin Jalali• 2024

Related benchmarks

TaskDatasetResultRank
Video ReconstructionDROP
PSNR35.03
21
Video ReconstructionAverage
PSNR27.73
21
Video ReconstructionKobe
PSNR26.39
21
Video ReconstructionRunner
PSNR31.15
21
Video ReconstructionCrash
PSNR25.57
21
Video ReconstructionAerial
PSNR25.62
21
Video ReconstructionTraffic
PSNR22.66
21
Video ReconstructionRunner Noise-free
PSNR34.32
8
Video ReconstructionDrop Noise-free
PSNR40.76
8
Video ReconstructionKobe Noise-free
PSNR28.42
8
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