具有去噪保证的压缩感知部分确定性采样方法 / Partially deterministic sampling for compressed sensing with denoising guarantees
1️⃣ 一句话总结
这篇论文提出了一种优化的压缩感知采样方案,它巧妙地将随机采样与确定性采样结合起来,通过理论分析和实验证明,该方法能有效提升图像重建质量并提供更好的去噪保证。
We study compressed sensing when the sampling vectors are chosen from the rows of a unitary matrix. In the literature, these sampling vectors are typically chosen randomly; the use of randomness has enabled major empirical and theoretical advances in the field. However, in practice there are often certain crucial sampling vectors, in which case practitioners will depart from the theory and sample such rows deterministically. In this work, we derive an optimized sampling scheme for Bernoulli selectors which naturally combines random and deterministic selection of rows, thus rigorously deciding which rows should be sampled deterministically. This sampling scheme provides measurable improvements in image compressed sensing for both generative and sparse priors when compared to with-replacement and without-replacement sampling schemes, as we show with theoretical results and numerical experiments. Additionally, our theoretical guarantees feature improved sample complexity bounds compared to previous works, and novel denoising guarantees in this setting.
具有去噪保证的压缩感知部分确定性采样方法 / Partially deterministic sampling for compressed sensing with denoising guarantees
这篇论文提出了一种优化的压缩感知采样方案,它巧妙地将随机采样与确定性采样结合起来,通过理论分析和实验证明,该方法能有效提升图像重建质量并提供更好的去噪保证。
源自 arXiv: 2604.04802